Hostname: page-component-78c5997874-ndw9j Total loading time: 0 Render date: 2024-11-10T21:17:58.593Z Has data issue: false hasContentIssue false

A remark on Gibbs measures with log-correlated Gaussian fields

Published online by Cambridge University Press:  08 April 2024

Tadahiro Oh*
Affiliation:
The University of Edinburgh, and The Maxwell Institute for the Mathematical Sciences, James Clerk Maxwell Building, The King’s Buildings, Peter Guthrie Tait Road, EH9 3FD, United Kingdom
Kihoon Seong
Affiliation:
Department of Mathematics, Cornell University, 310 Malott Hall, Ithaca, NY, 14853, USA; E-mail: kihoonseong@cornell.edu
Leonardo Tolomeo
Affiliation:
The University of Edinburgh, and The Maxwell Institute for the Mathematical Sciences, James Clerk Maxwell Building, The King’s Buildings, Peter Guthrie Tait Road, EH9 3FD, United Kingdom Mathematical Institute, Hausdorff Center for Mathematics, Universität Bonn, Bonn, Germany; E-mail: l.tolomeo@ed.ac.uk
*
E-mail: hiro.oh@ed.ac.uk (corresponding author).

Abstract

We study Gibbs measures with log-correlated base Gaussian fields on the d-dimensional torus. In the defocusing case, the construction of such Gibbs measures follows from Nelson’s argument. In this paper, we consider the focusing case with a quartic interaction. Using the variational formulation, we prove nonnormalizability of the Gibbs measure. When $d = 2$, our argument provides an alternative proof of the nonnormalizability result for the focusing $\Phi ^4_2$-measure by Brydges and Slade (1996). Furthermore, we provide a precise rate of divergence, where the constant is characterized by the optimal constant for a certain Bernstein’s inequality on $\mathbb R^d$. We also go over the construction of the focusing Gibbs measure with a cubic interaction. In the appendices, we present (a) nonnormalizability of the Gibbs measure for the two-dimensional Zakharov system and (b) the construction of focusing quartic Gibbs measures with smoother base Gaussian measures, showing a critical nature of the log-correlated Gibbs measure with a focusing quartic interaction.

Type
Probability
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
Copyright
© The Author(s), 2024. Published by Cambridge University Press

1 Introduction

1.1 Log-correlated Gibbs measures

In this paper, we study the Gibbs measure $\rho $ on the d-dimensional torus on ${\mathbb {T}}^d = ({\mathbb {R}}/2\pi \mathbb {Z})^d$ , formally written asFootnote 1

(1.1) $$ \begin{align} d\rho(u) = Z^{-1} \exp \bigg(\frac{\lambda}{k} \int_{{\mathbb{T}}^d} u^k dx\bigg) d\mu(u), \end{align} $$

where $k \geq 3$ is an integer and the coupling constant $\lambda \in {\mathbb {R}}\setminus \{0\}$ denotes the strength of interaction, which is repulsive (i.e., defocusing) when $\lambda < 0$ and k is even, and is attractive (i.e., focusing) when $\lambda> 0$ or k is odd.Footnote 2 Here, $\mu $ is the log-correlated Gaussian free field on ${\mathbb {T}}^d$ , formally given by

(1.2) $$ \begin{align} d \mu = Z^{-1} e^{-\frac 12 \| u\|_{H^{d/ 2} }^2 } du & = Z^{-1} \prod_{n \in \mathbb{Z}^d} e^{-\frac 12 \langle n \rangle^{d} |\widehat u(n)|^2} d\widehat u(n) , \end{align} $$

where $\langle \,\cdot \, \rangle = (1+|\,\cdot \,|^2)^{\frac {1}{2}}$ and $\widehat u(n)$ denotes the Fourier coefficient of u. When $d = 2$ , $\mu $ corresponds to the massive Gaussian free field on ${\mathbb {T}}^2$ . Recall that this Gaussian measure $\mu $ is nothing but the induced probability measure under the map:Footnote 3

(1.3) $$ \begin{align} \omega\in \Omega \longmapsto u(\omega) = \sum_{n \in {\mathbb{Z}}^d } \frac{g_n(\omega)}{\langle n \rangle^{\frac{d}{2}}} e_n, \end{align} $$

where $e_n=e^{i n\cdot x}$ and $\{ g_n \}_{n \in \mathbb {Z}^d}$ is a sequence of mutually independent standard complex-valued Gaussian random variables on a probability space $(\Omega ,\mathcal {F},\mathbb {P})$ conditioned that $g_{-n} = \overline {g_n}$ .Footnote 4 See Remark 1.1. It is well known that a typical function u in the support of $\mu $ is merely a distribution and thus a renormalization on the potential energy $\frac \lambda k \int _{{\mathbb {T}}^d} u^k dx$ is required for the construction of the Gibbs measure $\rho $ .

Our main goal in this paper is to study the Gibbs measure $\rho $ in (1.1) in the focusing case. In particular, we prove the nonnormalizability of the focusing Gibbs measure $\rho $ with the quartic interaction ( $\lambda> 0$ and $k = 4$ ). See Theorem 1.4. We also present a brief discussion on the construction of the Gibbs measure with the cubic interaction. See Theorem 1.9.

Before proceeding further, let us first go over the defocusing case: $\lambda < 0$ and $k \geq 4$ is an even integer. When $d = 2$ , the defocusing Gibbs measure $\rho $ in (1.1) corresponds to the well-studied $\Phi ^k_2$ -measure whose construction follows from the hypercontractivity of the Ornstein–Uhlenbeck semigroup (see Lemma 2.3) and Nelson’s estimate [Reference Nelson39]. See [Reference Simon60, Reference Glimm, Jaffe and Physics26, Reference Da Prato and Tubaro21, Reference Oh and Thomann47]. For a general dimension $d \geq 1$ , the same argument allows us to construct the defocusing Gibbs measure $\rho $ in (1.1) for any $\lambda < 0$ and any even integer $k \ge 4$ . Let us briefly go over the procedure.

Given $N \in \mathbb {N}$ , we define the frequency projectorFootnote 5 $\pi _N$ by

(1.4) $$ \begin{align} \pi_N f = \sum_{ |n| \leq N} \widehat f (n) e_n. \end{align} $$

For u as in (1.3), set $u_N = \pi _N u$ . Then, for each fixed $x \in {\mathbb {T}}^d$ , $u_N(x)$ is a mean-zero real-valued Gaussian random variable with variance

(1.5) $$ \begin{align} \sigma_N = {\mathbb{E}}\big[u_N^2(x)\big] = \sum _{|n| \le N} \frac{1}{\langle n \rangle^d} \sim \log N \longrightarrow \infty, \end{align} $$

as $N \to \infty $ . Note that $\sigma _N$ is independent of $x \in {\mathbb {T}}^d$ in the current translation invariant setting. We then define the renormalized power (= Wick power) $:\! u_N^k\!:$ by setting

(1.6) $$ \begin{align} :\! u_N^k (x) \!: \, \stackrel{\mathrm{def}}{=} H_k(u_N(x); \sigma_N), \end{align} $$

where $H_k(x;\sigma )$ is the Hermite polynomial of degree k with a variance parameter $\sigma $ defined through the following generating function:Footnote 6

(1.7) $$ \begin{align} F(t, x; \sigma) \stackrel{\mathrm{def}}{=} e^{tx - \frac{1}{2}\sigma t^2} = \sum_{k = 0}^\infty \frac{t^k}{k!} H_k(x;\sigma). \end{align} $$

For readers’ convenience, we write out the first few Hermite polynomials:

$$ \begin{align*} & H_0(x; \sigma) = 1, \quad H_1(x; \sigma) = x, \quad H_2(x; \sigma) = x^2 - \sigma, \quad H_3(x; \sigma) = x^3 - 3\sigma x. \end{align*} $$

See, for example, [Reference Kuo32], for further properties of the Hermite polynomials. We then define the following renormalized truncated potential energy:

(1.8) $$ \begin{align} R_N(u)=\frac \lambda k\int_{{\mathbb{T}}^d} :\! u_N^k \!: dx, \end{align} $$

where the coupling constant $\lambda < 0 $ denotes the strength of repulsive interaction. A standard computation allows us to show that $\{R_N \}_{N \in \mathbb {N}}$ forms a Cauchy sequence in $L^p(\mu )$ for any finite $p \geq 1$ , thus converging to some random variable $R(u)$ :

(1.9) $$ \begin{align} \lim_{N\rightarrow\infty} R_N(u)=R(u) \end{align} $$

in $L^p(\mu )$ and almost surely See, for example, Proposition 1.1 in [Reference Oh and Thomann47].Footnote 7

Define the renormalized truncated Gibbs measure $\rho _{N}$ by

$$ \begin{align*} d \rho_{N} (u) = Z_{N}^{-1} e^{R_N(u)} d \mu(u). \end{align*} $$

Then, a standard application of Nelson’s estimateFootnote 8 yields the following uniform exponential integrability of the density; given any finite $ p \ge 1$ , there exists $C_{p, d}> 0$ such that

(1.10) $$ \begin{align} \sup_{N\in \mathbb{N}} \Big\| e^{R_N(u)}\Big\|_{L^p( \mu)} \leq C_{p,d} < \infty. \end{align} $$

See, for example, Proposition 1.2 in [Reference Oh and Thomann47]. Then, the uniform bound (1.10) together with softer convergence in measure (as a consequence of (1.9)) implies the following $L^p$ -convergence of the density:

$$ \begin{align*} \lim_{N\rightarrow\infty}e^{ R_N(u)}=e^{R(u)} \qquad \text{in } L^p( \mu). \end{align*} $$

See, for example, Remark 3.8 in [Reference Tzvetkov66]. This allows us to construct the defocusing Gibbs measure:

$$ \begin{align*} d\rho(u)= Z^{-1} e^{R(u)}d\mu(u) \end{align*} $$

as a limit of the truncated defocusing Gibbs measure $\rho _N$ .

As mentioned above, our main goal is to study the Gibbs measure $\rho $ with the log-correlated Gaussian field $\mu $ in the focusing case ( $\lambda> 0$ ). Before doing so, we present a brief discussion on dynamical problems associated with these Gibbs measures in Subsection 1.2. We then present the nonnormalizability of the focusing log-correlated Gibbs measure with the quartic interaction (Theorem 1.4) and the construction of the focusing log-correlated Gibbs measure with the cubic interaction (Theorem 1.9).

Remark 1.1. Recall from [Reference Aronszajn and Smith2, (4,2)] that the Green’s function $G_{{\mathbb {R}}^d}$ for $(1 - \Delta )^{\frac {d}{2}}$ on ${\mathbb {R}}^d$ satisfies

(1.11) $$ \begin{align} G_{{\mathbb{R}}^d}(x) = -c_d \log|x| + o(1) \end{align} $$

as $x \to 0$ for some $c_d> 0$ . Here, in view of the translation invariance, we view G as a function of one variable through $G(x) \equiv G(x, 0)$ . It is a smooth function on ${\mathbb {R}}^d \setminus \{0\}$ and decays exponentially as $|x| \to \infty $ ; see [Reference Grafakos28, Proposition 1.2.5].

Now, let G be the Green’s function for $(1-\Delta )^{\frac {d}{2}}$ on ${\mathbb {T}}^d$ . Then, we have

(1.12) $$ \begin{align} G \stackrel{\mathrm{def}}{=} (1-\Delta)^{-\frac{d}{2}} \delta_0 = \sum_{n\in\mathbb{Z}^d}\frac 1{\langle n \rangle^{d}}e_n = \lim_{N \to \infty} \sum_{|n|\leq N}\frac 1{\langle n \rangle^{d}}e_n. \end{align} $$

Recall the Poisson summation formula ([Reference Grafakos27, Theorem 3.2.8]):

(1.13) $$ \begin{align} \sum_{n \in \mathbb{Z}^d} \mathcal{F}_{{\mathbb{R}}^d} (f)(n)e_n(x)=\sum_{m\in \mathbb{Z}^d} f(x+2\pi m), \quad x \in {\mathbb{R}}^d, \end{align} $$

for any function f on ${\mathbb {R}}^d$ such that $|f(x)|\lesssim \langle x \rangle ^{-d-\delta }$ for some $\delta> 0$ and $\sum _{n \in \mathbb {Z}^d} |\mathcal {F}_{{\mathbb {R}}^d} (f)(n)| < \infty $ . The Poisson summation formula (1.13) is a typical tool to pass information from ${\mathbb {R}}^d$ to a periodic torus ${\mathbb {T}}^d$ ; see [Reference Bényi and Oh4, Reference Oh and Wang50, Reference Bényi, Oh and Zhao5] for example. Here, $\mathcal {F}_{{\mathbb {R}}^d} (f)(n)$ denotes the Fourier transform of f on ${\mathbb {R}}^d$ given by

(1.14) $$ \begin{align} \mathcal{F}_{{\mathbb{R}}^d} (f)(n) = \frac 1{(2\pi)^d} \int_{{\mathbb{R}}^d} f(x) e_{-n}(x) dx, \end{align} $$

where $dx = dx_{{\mathbb {R}}^d}$ is the standard Lebesgue measure on ${\mathbb {R}}^d$ . Then, by applying (1.13) (with a frequency truncation $\pi _N$ and taking $N \to \infty $ ) together with the asymptotics (1.11), we conclude that there exists a smooth function $ R$ such that

(1.15) $$ \begin{align} G(x) = - c_d \log|x| + R(x) \end{align} $$

for any $x \in {\mathbb {T}}^d \setminus \{0\}$ . See [Reference Oh, Robert, Sosoe and Wang44, Section 2] for a related discussion. Finally, from (1.3), (1.12) and (1.15), we obtain

$$ \begin{align*} {\mathbb{E}}_\mu \big[u(x) u(y)\big] = G(x-y) = - c_d \log|x-y| + R(x-y) \end{align*} $$

for any $x, y \in {\mathbb {T}}^d$ with $x\ne y$ .

1.2 Dynamical problems associated with the log-correlated Gibbs measures

From the viewpoint of mathematical physics such as Euclidean quantum field theory, the construction of the Gibbs measures $\rho $ in (1.1) is of interest in its own right. In this subsection, we briefly discuss some examples of dynamical problems associated with these log-correlated Gibbs measures. These examples show the importance of studying the log-correlated Gibbs measure $\rho $ in (1.1) from the (stochastic) partial differential equation (PDE) point of view.

The associated energy functionalFootnote 9 for the Gibbs measure $\rho $ in (1.1) is given by

(1.16) $$ \begin{align} E(u) = \frac 12 \int_{{\mathbb{T}}^d} |(1-\Delta)^{\frac{d}{4}} u|^2 dx - \frac \lambda k \int_{{\mathbb{T}}^d} u^{k} dx. \end{align} $$

The study of the Gibbs measures for Hamiltonian PDEs, initiated by [Reference Friedlander25, Reference Lebowitz, Rose and Speer33, Reference Bourgain8, Reference McKean38, Reference Bourgain11], has been an active field of research over the last decade. We first list examples of the Hamiltonian PDEs generated by this energy functional $E(u)$ in (1.16) along with the references.

  1. (i) fractional nonlinear Schrödinger equation (for complex-valued u):

    (1.17) $$ \begin{align} i\partial_t u + (1-\Delta)^{{\frac{d}{2}}}u -\lambda | u |^{k-2}u=0. \end{align} $$
    Equation (1.17) corresponds to the nonlinear half-wave equation (also known as the semirelativistic nonlinear Schrödinger equation (NLS)) when $ d= 1$ , to the well-studied cubic NLS when $d = 2$ ([Reference Bourgain11, Reference Oh and Thomann47, Reference Deng, Nahmod and Yue23]), and to the biharmonic NLS when $d = 4$ .

    In Appendix A, we also provide a brief discussion on the Gibbs measure for the Zakharov system when $d = 2$ .

  2. (ii) fractional nonlinear wave equation (NLW):Footnote 10

    (1.18) $$ \begin{align} \partial_t^2 u + (1- \Delta)^{\frac{d}{2}} u - \lambda u^{k-1} = 0. \end{align} $$
    Equation (1.18) corresponds to the NLW equation (or the nonlinear Klein–Gordon equation) when $d = 2$ ([Reference Oh and Thomann48]), and to the nonlinear beam equation when $d = 4$ .
  3. (iii) generalized Benjamin–Ono equation (with $d = 1$ ):Footnote 11

    (1.19) $$ \begin{align} \partial_t u+\mathcal{H}\partial_x^2u -\lambda \partial_x (u^{k-1})=0, \end{align} $$
    where $\mathcal H$ denotes the Hilbert transform defined by $\widehat {\mathcal H f}(n) = -i \text {sgn}(n) \widehat f(n)$ with the understanding that $\widehat {\mathcal H f}(0) = 0$ . Equation (1.19) is known as the Benjamin–Ono equation when $k = 3$ ([Reference Tzvetkov67, Reference Deng22]) and the modified Benjamin–Ono equation when $k = 4$ .

Next, we list stochastic PDEs associated with the Gibbs measure $\rho $ in (1.1).

  1. (iv) parabolic stochastic quantization equation [Reference Parisi and Wu52]:

    (1.20) $$ \begin{align} \partial_t u + (1 - \Delta)^{\frac{d}{2}} u -\lambda u^{k-1} = \sqrt 2\xi. \end{align} $$

    Here, $\xi $ denotes the space-time white noise on ${\mathbb {T}}^d \times {\mathbb {R}}_+$ . When $d = 2$ and $\lambda < 0$ , (1.20) corresponds to the standard parabolic $\Phi ^k_2$ -model ([Reference Da Prato and Debussche20, Reference Röckner, Zhu and Zhu56, Reference Tsatsoulis and Weber65]).

  2. (v) canonical stochastic quantization equation [Reference Ryang, Saito and Shigemoto57]:

    (1.21) $$ \begin{align} \partial_t^2 u + \partial_t u + (1 - \Delta)^{\frac{d}{2}} u -\lambda u^{k-1} = \sqrt{2} \xi.\end{align} $$

    Equation (1.21) corresponds to the stochastic damped NLW when $d = 2$ ([Reference Gubinelli, Koch and Oh29, Reference Gubinelli, Koch, Oh and Tolomeo30, Reference Tolomeo63]), and to the stochastic damped nonlinear beam equation when $d = 4$ .

When $d = 2$ , the conservative stochastic Cahn–Hilliard equation is known to (formally) preserve the Gibbs measure $\rho $ in (1.1) ([Reference Röckner, Yang and Zhu55]).

For the equations listed above, once we establish local well-posedness almost surely with respect to the Gibbs measure initial data, Bourgain’s invariant measure argument [Reference Bourgain8, Reference Bourgain11] allows us to construct almost sure global dynamics and to prove invariance of the Gibbs measure. However, since functions on the support of the log-correlated Gibbs measure $\rho $ in (1.1) almost surely belong to the $L^p$ -based Sobolev spaces $W^{s, p}({\mathbb {T}}^d) \setminus L^p({\mathbb {T}}^d)$ only for $ s < 0$ with any $1 \le p \le \infty $ , there are only a handful of the well-posedness results [Reference Bourgain11, Reference Deng22, Reference Oh and Thomann48, Reference Gubinelli, Koch and Oh29, Reference Deng, Nahmod and Yue23] for the Hamiltonian PDEs mentioned above (including (1.21)).

Remark 1.2. We point out that as long as we can construct the Gibbs measure, a compactness argument with invariance of the truncated Gibbs measures and Skorokhod’s theorem allows us to construct (nonunique) global-in-time dynamics along with invariance of the Gibbs measure in some mild sense. See [Reference Albeverio and Cruzeiro1, Reference Da Prato and Debussche19, Reference Burq, Thomann and Tzvetkov14, Reference Oh and Thomann47, Reference Oh, Richards and Thomann43]. In our current setting, this almost sure global existence result holds for (i) the defocusing case ( $\lambda < 0$ and even $k \geq 4$ ; see the discussion in Subsection 1.1) and (ii) the quadratic nonlinearity (i.e., $k = 3$ ). See Theorem 1.9 for the latter case.

Remark 1.3. Given $\delta> 0$ , consider the intermediate long wave equation (ILW) on ${\mathbb {T}}$ :

(1.22) $$ \begin{align} \partial_t u - \mathcal{G}_{\delta} \partial_x^2 u - \partial_x (u^{2}) = 0, \end{align} $$

where the dispersion operator $\mathcal {G}_{\delta } $ is given by

(1.23) $$ \begin{align} \widehat{\mathcal{G}_{\delta} f}(n) = - i \Big( \coth(\delta n )-\frac{1}{\delta n} \Big) \widehat f(n)\,, \hspace{1mm} \quad n \in\mathbb{Z}. \end{align} $$

Equation (1.22) models the internal wave propagation of the interface in a stratified fluid of finite depth $\delta> 0$ , providing a natural connection between the Benjamin–Ono regime ( $\delta = \infty $ ) and the Korteweg–de Vries (KdV) regime ( $\delta = 0$ ). Indeed, there are results establishing convergence of ILW to the Benjamin–Ono equation (and the KdV equation) as $\delta \to \infty $ (and $\delta \to 0$ , respectively); see [Reference Li34, Reference Chapouto, Forlano, Li, Oh and Pilod15, Reference Chapouto, Li, Oh and Pilod16] and the references therein. While it is not obvious from the rather complicated dispersive symbol in (1.23), the Gibbs measure associated to ILW is indeed log-correlated, and the results in this paper apply to the Gibbs measure associated to the generalized ILW (where the nonlinearity $\partial _x (u^2)$ in (1.22) is replaced by $\lambda \partial _x (u^{k-1})$ ). Furthermore, as $\delta \to \infty $ (and $\delta \to 0$ ), the Gibbs measure for the (generalized) ILW converges to that for the (generalized) Benjamin–Ono equation (and the (generalized) KdV equation, respectively) in an appropriate sense. See a recent work [Reference Li, Oh and Zheng35] for a further discussion. See also [Reference Chapouto, Li and Oh17] for the construction and convergence of invariant measures for ILW associated with higher order conservation laws.

1.3 Nonnormalizability of the focusing Gibbs measure

We now turn our attention to the focusing case. In this subsection, we study the Gibbs measure $\rho $ in (1.1) with the focusing quartic interaction ( $\lambda> 0$ and $k = 4$ ). In this case, we prove the following nonnormalizability of the (renormalized) focusing Gibbs measure $\rho $ .

Theorem 1.4. Let $\lambda> 0$ and $k = 4$ . Then, given any $K> 0$ , we have

(1.24) $$ \begin{align} \sup_{N\in \mathbb{N}} Z_{K,N}\stackrel{\mathrm{def}}{=} \sup_{N \in \mathbb{N}} {\mathbb{E}}_{\mu} \Big[ \mathbf 1_{\{|\int_{{\mathbb{T}}^d} \, :u_N^2: \, dx| \, \leq K\}} e^{ R_N (u)} \Big] = \infty , \end{align} $$

where $R_N$ is the renormalized potential energy defined in (1.8) with $k = 4$ . Moreover, the divergence rate of $Z_{K,N}$ is given by

(1.25) $$ \begin{align} \log Z_{K,N} = \lambda\frac{C_B}4 N^d \sigma_N^2 (1+o(1)) \sim N^d (\log N)^2, \end{align} $$

as $N\to \infty $ . Here, $C_B$ is the optimal constant in Bernstein’s inequality:

(1.26) $$ \begin{align} \|P f\|_{L^4({\mathbb{R}}^d, \frac{dx}{(2\pi)^d})}^4 \le C_B \|f\|_{L^2({\mathbb{R}}^d, \frac{dx}{(2\pi)^d})}^4, \end{align} $$

where P is the sharp Fourier projection onto the unit ball:

$$ \begin{align*}\widehat{Pf}(\xi) = \mathbf 1_{\{|\xi|\le 1\}} \widehat{f}(\xi),\end{align*} $$

and $\sigma _N$ is defined in (1.5). Moreover, we have

(1.27) $$ \begin{align} Z_K \stackrel{\mathrm{def}}{=} {\mathbb{E}}_{\mu} \Big[ \mathbf 1_{\{|\int_{{\mathbb{T}}^d} \, :u^2: \, dx| \, \leq K\}} e^{ R (u)} \Big] = \infty, \end{align} $$

where $R(u)$ is the limit of $R_N(u)$ defined in (1.9). In particular, the focusing Gibbs measure (even with a Wick-ordered $L^2$ -cutoff) cannot be defined as a probability measure.

When $d = 2$ , Theorem 1.4 provides an alternative proof of the nonnormalizability result for of the focusing $\Phi ^4_2$ -measure due to Brydges and Slade [Reference Brydges and Slade13] whose proof is based on analysis of a model closely related to the Berlin–Kac spherical model. Furthermore, Theorem 1.4 provides a precise rate (1.25) of divergence of the partition function $Z_{K, N}$ . Our strategy for proving the divergence rate (1.25) is straightforward and thus is expected to be applicable to a wide range of models.

Our proof of Theorem 1.4 is based on the variational approach due to Barashkov and Gubinelli [Reference Barashkov and Gubinelli3]. More precisely, we will rely on the Boué–Dupuis variational formula [Reference Boué and Dupuis7, Reference Üstünel68]; see Lemma 3.1. Our main task is to construct a drift term which achieves the desired divergence (1.24). Our argument is inspired by recent works by the third author with Weber [Reference Tolomeo and Weber64] and by the first and third authors with Okamoto [Reference Oh, Okamoto and Tolomeo41, Reference Oh, Okamoto and Tolomeo42]. In particular, our presentation closely follows but refines that in [Reference Oh, Okamoto and Tolomeo41], where an analogous nonnormalizability is shown for focusing Gibbs measures on ${\mathbb {T}}^3$ with a quartic interaction of Hartree-type. We point out that the argument in [Reference Oh, Okamoto and Tolomeo41] shows nonnormalizability only for large $K \gg 1$ and thus we need to refine the argument to prove the divergence (1.24) for any $K> 0$ . The main new ingredient (as compared to [Reference Oh, Okamoto and Tolomeo41]) is the construction a drift term which approximates a blowup profile, such that the Wick-ordered $L^2$ -cutoff does not exclude this blowup profile for any cutoff size $K>0$ . See, in particular, Lemma 3.4 and the proof of (3.42). We also mention related works [Reference Lebowitz, Rose and Speer33, Reference Brydges and Slade13, Reference Rider53, Reference Bourgain and Bulut12, Reference Oh, Sosoe and Tolomeo46, Reference Robert, Seong, Tolomeo and Wang54] on the nonnormalizability (and other issues) for focusing Gibbs measures.

Remark 1.5. As a direct consequence of (1.24), we have

$$ \begin{align*} \sup_{N \in \mathbb{N}} {\mathbb{E}}_{\mu} \Big[ e^{ R_N (u)} \Big] & \ge \sup_{N \in \mathbb{N}} {\mathbb{E}}_{\mu} \Big[ \mathbf 1_{\{\int_{{\mathbb{T}}^d} \, :u_N^2: \, dx \, \leq K\}} e^{ R_N (u)} \Big]\\ & \ge \sup_{N \in \mathbb{N}} {\mathbb{E}}_{\mu} \Big[ \mathbf 1_{\{|\int_{{\mathbb{T}}^d} \, :u_N^2: \, dx| \, \leq K\}} e^{ R_N (u)} \Big] = \infty. \end{align*} $$

Remark 1.6. In the one-dimensional setting studied in [Reference Lebowitz, Rose and Speer33, Reference Oh, Sosoe and Tolomeo46], the sharp Gagliardo–Nirenberg inequality on ${\mathbb {R}}$ plays an important role in determining (non-)normalizability of the focusing Gibbs measure with a sextic interaction. In our current problem with a quartic interaction, Bernstein’s inequality (1.26) on ${\mathbb {R}}^d$ , which is essentially a frequency-localized version of Sobolev’s inequality, plays a crucial role in determining the precise divergence rate (1.25). We point out that this particular form of Bernstein’s inequality appears due to the form of the regularization we use for our problem (namely, the sharp frequency truncation onto the frequencies $\{|n|\le N\}$ ). In the current singular setting where a renormalization is required, we need to start with a regularized problem. However, there are different ways to regularize a problem, and different regularizations lead to different divergence rates. For example, if we instead use a smooth frequency truncation, we would obtain a divergence rate with a different constant (while the essential rate $N^d (\log N)^2$ in (1.25) remains the same).

Remark 1.7. (i) An analogous nonnormalizability result holds for a focusing Gibbs measure with the quartic interaction even if we endow it with taming by the Wick-ordered $L^2$ -norm. See Remark 1.12.

(ii) By controlling combinatorial complexity, we can extend the nonnormalizability result in Theorem 1.4 to the higher-order interactions $k \geq 5$ in the focusing case (i.e., either k is odd or $\lambda> 0$ when k is even).

(iii) In terms of dynamical problems, Theorem 1.4 states that Gibbs measures associated with the equations listed in Subsection 1.2 do not exist for (i) $\lambda> 0$ and $k \ge 4$ or (ii) odd $k \ge 5$ . This list in particular includes

  • the focusing $L^2$ -(super)critical fractional NLS (1.17) (including the focusing (super)cubic NLS on  ${\mathbb {T}}^2$ ),

  • the focusing $L^2$ -(super)critical fractional NLW (1.18) (including the focusing (super)cubic NLW on ${\mathbb {T}}^2$ and the focusing (super)cubic nonlinear beam equation on ${\mathbb {T}}^4$ ),

  • the focusing modified Benjamin–Ono equation (1.19) (and the focusing generalized Benjamin–Ono equation with $k \ge 5$ ).

See also Appendix A for a brief discussion on the two-dimensional Zakharov system.

Remark 1.8. In a recent work [Reference Oh, Sosoe and Tolomeo46], the first and third authors with Okamoto studied the construction of the $\Phi ^3_3$ -measure on ${\mathbb {T}}^3$ (i.e., (1.1) with $d = 3$ and $k = 3$ ) and established the following phase transition: normalizability in the weakly nonlinear regime ( $|\lambda |\ll 1$ ) and nonnormalizability in the strongly nonlinear regime ( $|\lambda |\gg 1$ ), where the latter result was obtained based on the strategy in the current paper. In particular, in view of the nonnormalizability of the $\Phi ^3_3$ -measure in the strongly nonlinear regime, we expect that the same approach would yield nonnormalizability of the focusing $\Phi ^k_3$ -measure for $k \ge 4$ (namely, (i) for even $k \ge 4$ with $\lambda> 0$ or (ii) for odd $k \ge 5$ with $\lambda \ne 0$ ).

1.4 Gibbs measure with the cubic interaction

Let us first go over the focusing Gibbs measure construction in the two-dimensional setting. In [Reference Bourgain10], Bourgain reported Jaffe’s construction of a $\Phi ^3_2$ -measure endowed with a Wick-ordered $ L^2$ -cutoff:

(1.28) $$ \begin{align} d\rho(u) = Z^{-1} \mathbf 1_{\{\int_{{\mathbb{T}}^2} :\,u^2: \, dx\, \leq K\}} e^{ \int_{{\mathbb{T}}^2} :u^3: \, dx }d \mu(u). \end{align} $$

Note that the measure in (1.28) is not suitable to generate any NLS / NLW / heat dynamics since (i) the renormalized cubic power $:\!u^3 \!:$ makes sense only in the real-valued setting and hence is not suitable for the Schrödinger equation and (ii) NLW and the heat equation do not preserve the $L^2$ -norm of a solution and thus are incompatible with the Wick-ordered $L^2$ -cutoff. In [Reference Bourgain10], Bourgain instead proposed to consider the Gibbs measure of the form:Footnote 12 .

(1.29) $$ \begin{align} d\rho(u ) = Z^{-1} e^{ \int_{{\mathbb{T}}^2} :u^3: \, dx - A \big(\int_{{\mathbb{T}}^2} :\,u^2: \, dx\big)^2} d \mu( u ) \end{align} $$

(for sufficiently large $A>0$ ) in studying NLW dynamics on ${\mathbb {T}}^2$ .Footnote 13

We now extend the construction of the Gibbs measures in (1.28) and (1.29) to a general dimension $d \geq 1$ . Given $N \in \mathbb {N}$ , let

(1.30) $$ \begin{align} R_N^\diamond (u) &= \frac \lambda 3\int_{{\mathbb{T}}^d} :\! u_N^3 \!: dx - A \, \bigg( \int_{{\mathbb{T}}^d} :\! u_N^2 \!: dx\bigg)^2, \end{align} $$

where the coupling constant $\lambda \in {\mathbb {R}}\setminus \{0\} $ denotes the strength of cubic interaction, and define the truncated renormalized Gibbs measure $\rho _{N}$ by

(1.31) $$ \begin{align} d \rho_{N} (u) = Z_{N}^{-1} e^{R_N^\diamond(u)} d \mu(u). \end{align} $$

Then, we have the following result for the focusing Gibbs measure with a cubic interaction.

Theorem 1.9. Let $\lambda \in {\mathbb {R}}\setminus \{0\}$ . Given any finite $ p \ge 1$ , there exists sufficiently large $A = A(\lambda , p)> 0$ such that $R_N^\diamond $ in (1.30) converges to some limit $R^\diamond $ in $L^p(\mu )$ . Moreover, there exists $C_{p, d, A}> 0$ such that

(1.32) $$ \begin{align} \sup_{N\in \mathbb{N}} \Big\| e^{R_N^\diamond(u)}\Big\|_{L^p(\mu)} \leq C_{p,d, A} < \infty. \end{align} $$

In particular, we have

(1.33) $$ \begin{align} \lim_{N\rightarrow\infty}e^{ R_N^\diamond(u)}=e^{R^\diamond(u)} \qquad \text{in } L^p(\mu). \end{align} $$

As a consequence, the truncated renormalized Gibbs measure $\rho _{N}$ in (1.31) converges, in the sense of (1.33), to the focusing Gibbs measure $\rho $ given by

$$ \begin{align*} d\rho(u)= Z^{-1} e^{R^\diamond(u)}d\mu(u). \end{align*} $$

Furthermore, the resulting Gibbs measure $\rho $ is equivalent to the log-correlated Gaussian field $\mu $ .

As for the convergence of $R_N^\diamond $ , we omit details since the argument is standard. See, for example, [Reference Oh and Thomann47, Proposition 1.1], [Reference Oh and Tzvetkov49, Proposition 3.1], [Reference Gunaratnam, Oh, Tzvetkov and Weber31, Lemma 4.1] and [Reference Oh, Okamoto and Tolomeo41, Lemma 5.1] for related details. As mentioned in Subsection 1.1, the main task is to prove the uniform integrability bound (1.32). Once this is done, the rest follows from a standard argument. In Section 4, we establish the bound (1.32) by using the variational formulation.

Remark 1.10. Note that

(1.34) $$ \begin{align} \mathbf 1_{\{|\,\cdot \,| \le K\}}(x) \le \exp\big( - A |x|^\gamma\big) \exp(A K^\gamma) \end{align} $$

for any $K, A , \gamma> 0$ . Then, the following uniform bound for the focusing cubic interaction:

$$ \begin{align*} \sup_{N\in \mathbb{N}} \Big\| \mathbf 1_{\{|\int_{{\mathbb{T}}^d} :\,u^2: \, dx| \leq K\}} e^{R_N(u)}\Big\|_{L^p( \mu)} \leq C_{p,d, K} < \infty \end{align*} $$

for any $K> 0$ follows as a direct consequence of the uniform bound (1.32) and (1.34) with $\gamma = 2$ , where $R_N$ is as in (1.8) with $\lambda \in {\mathbb {R}}\setminus \{ 0\}$ and $k = 3$ . This allows us to construct the log-correlated Gibbs measure with the cubic interaction (with a Wick-ordered $ L^2$ -cutoff):

$$ \begin{align*} d\rho(u) = Z^{-1} \mathbf 1_{\{|\int_{{\mathbb{T}}^d} :\,u^2: \, dx| \leq K\}} e^{ \frac \lambda 3\int_{{\mathbb{T}}^d} :u^3: \, dx }d \mu(u) \end{align*} $$

as a limit of its truncated version (for any $\lambda \in {\mathbb {R}}\setminus \{0\}$ and $ K> 0$ ).

Remark 1.11. In [Reference Tzvetkov67], Tzvetkov constructed the Gibbs measure (with a Wick-ordered $ L^2$ -cutoff) for the Benjamin–Ono equation (1.19) with $k = 3$ . Theorem 1.9 and Remark 1.10 provide an alternative proof of the construction of the Gibbs measure for the Benjamin–Ono equation.

Remark 1.12. (i) It follows from Theorem 1.4 and (1.34) that an analogue of Theorem 1.9 fails for the quartic interaction ( $k = 4$ ). More precisely, we have

$$ \begin{align*} \sup_{N\in \mathbb{N}} \bigg\| \exp \bigg( \frac \lambda 4 \int_{{\mathbb{T}}^d} :\! u_N^4 \!: dx - A \, \Big| \int_{{\mathbb{T}}^d} :\! u_N^2 \!: dx\Big|^\gamma \bigg)\bigg\|_{L^p(\mu)} = \infty \end{align*} $$

for any $\lambda , A, \gamma> 0$ .

(ii) If we consider a smoother base Gaussian measure $\mu _\alpha $ , then we can prove the following uniform exponential integrability bound; given any $\lambda> 0$ , $\alpha> {\frac {d}{2}}$ and finite $p \geq 1$ , there exists sufficiently large $A = A(\lambda , \alpha , p)> 0$ and $\gamma = \gamma (\alpha )> 0$ such that

(1.35) $$ \begin{align} \sup_{N\in \mathbb{N}} \bigg\| \exp \bigg( \frac \lambda 4 \int_{{\mathbb{T}}^d} u_N^4 dx - A \, \Big( \int_{{\mathbb{T}}^d} u_N^2 dx\Big)^\gamma \bigg)\bigg\|_{L^p(\mu_\alpha)} \leq C_{p, d, A} < \infty. \end{align} $$

Here, $\mu _\alpha $ denotes the Gaussian measure with a formal density

(1.36) $$ \begin{align} d \mu_\alpha = Z^{-1} e^{-\frac 12 \| u\|_{H^{\alpha} }^2 } du. \end{align} $$

See Appendix B for the proof of (1.35). The bound (1.35) allows us to construct the focusing Gibbs measure with a focusing quartic interaction of the form:

(1.37) $$ \begin{align} d\rho_\alpha = Z^{-1} e^{ \frac \lambda 4 \int_{{\mathbb{T}}^d} u^4 dx - A \big(\int_{{\mathbb{T}}^d} u^2 dx\big)^\gamma} d \mu_\alpha. \end{align} $$

Moreover, in view of (1.34), we can also construct the following focusing Gibbs measure with an $L^2$ -cutoff:

(1.38) $$ \begin{align} d\rho_\alpha = Z^{-1} \mathbf 1_{\{\int_{{\mathbb{T}}^d} |u|^2 dx \leq K\}} e^{ \frac \lambda 4 \int_{{\mathbb{T}}^d} |u|^4 dx } d \mu_\alpha \end{align} $$

for any $K> 0$ .

In [Reference Sun and Tzvetkov61, Reference Sun and Tzvetkov62], Sun and Tzvetkov recently studied the following fractional NLS on ${\mathbb {T}}$ :

(1.39) $$ \begin{align} i\partial_t u + (1-\partial_x^2)^{\alpha}u -\lambda | u |^{2}u=0 \end{align} $$

in the defocusing case ( $\lambda < 0$ ). They proved almost sure local well-posedness of (1.39) with respect to the Gaussian measure $\mu _\alpha $ in (1.36) for $\alpha> \frac {31- \sqrt {233}}{28} \approx 0.562 \ ( \, > \frac 12)$ ,Footnote 14 which in turn yielded almost sure global well-posedness with respect to the defocusing Gibbs measure (namely, $\rho _\alpha $ in (1.38) without an $L^2$ -cutoff) and invariance of the defocusing Gibbs measure. Since their local result also holds in the focusing case ( $\lambda>0$ ), our construction of the focusing Gibbs measure $\rho _\alpha $ in (1.38) implies almost sure global well-posedness of (1.39) with respect to the focusing Gibbs measure $\rho _\alpha $ in (1.38) and its invariance under the dynamics of (1.39) for the same range of $\alpha $ .

(iii) Theorem 1.4 and Part (ii) of this remark show that in the case of the focusing quartic interaction, there is no phase transition, depending on the value of $\lambda> 0$ . Compare this with the situation in [Reference Oh, Okamoto and Tolomeo41, Reference Oh, Okamoto and Tolomeo42], where such a phase transition (as described in Remark 1.8) was established in the critical case. It may be of interest to pursue the issue of a possible phase transition for a higher-order focusing interaction, in the nonsingular regime $\alpha> {\frac {d}{2}}$ .

2 Preliminary lemmas

In this section, we recall basic definitions and lemmas used in this paper.

Let $s \in {\mathbb {R}}$ and $1 \leq p \leq \infty $ . We define the $L^2$ -based Sobolev space $H^s({\mathbb {T}}^d)$ by the norm:

$$ \begin{align*} \| f \|_{H^s} = \| \langle n \rangle^s \widehat f (n) \|_{\ell^2_n}. \end{align*} $$

We also define the $L^p$ -based Sobolev space $W^{s, p}({\mathbb {T}}^d)$ by the norm:

$$ \begin{align*} \| f \|_{W^{s, p}} = \big\| \mathcal{F}^{-1} [\langle n \rangle^s \widehat f(n)] \big\|_{L^p}. \end{align*} $$

When $p = 2$ , we have $H^s({\mathbb {T}}^d) = W^{s, 2}({\mathbb {T}}^d)$ .

2.1 Deterministic estimates

We first recall the following interpolation and fractional Leibniz rule. As for the second estimate (2.1), see [Reference Gubinelli, Koch and Oh29, Lemma 3.4].

Lemma 2.1. The following estimates hold.

(i) (interpolation) For $0 < s_1 < s_2$ , we have

$$ \begin{align*} \| u \|_{H^{s_1}} \le \| u \|_{H^{s_2}}^{\frac{s_1}{s_2}} \| u \|_{L^2}^{\frac{s_2-s_1}{s_2}}. \end{align*} $$

(ii) (fractional Leibniz rule) Let $0\le s \le 1$ . Suppose that $1<p_j,q_j,r < \infty $ , $\frac 1{p_j} + \frac 1{q_j}= \frac 1r$ , $j = 1, 2$ . Then, we haveFootnote 15

(2.1) $$ \begin{align} \| \langle \nabla \rangle^s (fg) \|_{L^r({\mathbb{T}}^d)} \lesssim \Big( \| f \|_{L^{p_1}({\mathbb{T}}^d)} \| \langle \nabla \rangle^s g \|_{L^{q_1}({\mathbb{T}}^d)} + \| \langle \nabla \rangle^s f \|_{L^{p_2}({\mathbb{T}}^d)} \| g \|_{L^{q_2}({\mathbb{T}}^d)}\Big), \end{align} $$

where $\langle \nabla \rangle = \sqrt {1 - \Delta }$ .

The next lemma states almost optimal Bernstein’s inequality on ${\mathbb {T}}^d$ .

Lemma 2.2. Given $N \in \mathbb {N}$ , let $\pi _N$ be the frequency projector as in (1.4). Then, we have

$$ \begin{align*} \|\pi_N f\|_{L^4({\mathbb{T}}^d)}^4 \le C_B N^d (1 +o(1)) \| f\|_{L^2({\mathbb{T}}^d)}^4 \end{align*} $$

as $N \to \infty $ , where $C_B$ is the optimal constant for Bernstein’s inequality (1.26) on ${\mathbb {R}}^d$ .

Proof. Given $N \in \mathbb {N}$ , let $C_{B,N}$ be the optimal constant for the following inequality on ${\mathbb {T}}^d$ :

(2.2) $$ \begin{align} \|\pi_N f\|_{L^4({\mathbb{T}}^d)}^4 \le C_{B,N} N^d \| \pi_N f\|_{L^2({\mathbb{T}}^d)}^4, \end{align} $$

and let $f_N$ be an optimizer for (2.2) with $\|f_N\|_{L^2({\mathbb {T}}^d)} = 1$ and $\pi _N f_N = f_N$ . In particular, we have

(2.3) $$ \begin{align} \|f_N \|_{L^4({\mathbb{T}}^d)}^4 = C_{B,N} N^d. \end{align} $$

Note that such an optimizer exists since the set $\{f_N: \|f_N\|_{L^2({\mathbb {T}}^d)} = 1, \, \pi _N f_N = f_N\}$ is compact. Moreover, by Sobolev’s inequality on the torus, we have

(2.4) $$ \begin{align} C_{B,N} \lesssim 1, \end{align} $$

uniformly in $N \in \mathbb {N}$ . Then, in view of (2.3), it suffices to show that

(2.5) $$ \begin{align} \limsup_{N\to \infty} N^{-d}\|f_N\|_{L^4({\mathbb{T}}^d)}^4 \le C_B. \end{align} $$

Fix small $\varepsilon> 0$ . Let $ \chi _\varepsilon \in C^\infty _c({\mathbb {R}}^d; [0, 1])$ be a smooth bump function which is compactly supported on $[-\pi ,\pi )^d\cong {\mathbb {T}}^d$ such that $\chi _\varepsilon \equiv 1$ on $[-\pi +c_0 \varepsilon ,\pi -c_0\varepsilon ]^d$ for some small $c_0 = c_0> 0$ to be chosen later. Recalling that $dx_{{\mathbb {T}}^d} = (2\pi )^{-d} dx$ is the normalized Lebesgue measure on ${\mathbb {T}}^d$ , we see that $\|f_N\|_{L^4({\mathbb {T}}^d)}^4$ is the average of $|f(x)|^4$ on ${\mathbb {T}}^d$ . Hence, by suitably translating $f_N$ (that does not affect its optimality) and choosing $c_0 = c_0> 0$ sufficiently small (independent of small $\varepsilon> 0$ and $N \in \mathbb {N}$ ), we have

(2.6) $$ \begin{align} \|\chi_\varepsilon^2f_N\|_{L^4({\mathbb{T}}^d)} \ge (1-\varepsilon) \|f_N\|_{L^4({\mathbb{T}}^d)}, \end{align} $$

uniformly in $N \in \mathbb {N}$ . In the following, when we view $f_N$ as a function on ${\mathbb {R}}^d$ , we simply view it as a periodic function: $f(x) = f(x + 2\pi m)$ , $m \in \mathbb {Z}^d$ .

Let $\theta \in C^\infty _c({\mathbb {R}}^d; [0, 1])$ be a smooth radial bump function on ${\mathbb {R}}^d$ such that $\theta (\xi ) = 1$ for $|\xi |\le 1$ and $\theta (\xi ) = 0$ for $|\xi |> 2$ . Given $M> 0$ , set $\theta _M(\xi ) = \theta \big (\frac \xi M\big )$ . Now, we set

(2.7) $$ \begin{align} \chi_{\varepsilon,M} = \mathbf{Q}_M(\chi_\varepsilon) : = \mathcal{F}^{-1}_{{\mathbb{R}}^d}(\theta_M)* \chi_{\varepsilon}, \end{align} $$

where $\mathcal {F}^{-1}_{{\mathbb {R}}^d}$ is the inverse Fourier transform on ${\mathbb {R}}^d$ . Namely, $\chi _{\varepsilon ,M}$ is the frequency-localized version of $\chi _\varepsilon $ onto the frequencies $\{\xi \in {\mathbb {R}}^d: |\xi |\le 2 M\}$ . Then, by choosing $M = M(\varepsilon , N)> 0$ sufficiently large, we have

(2.8) $$ \begin{align} \|\chi_\varepsilon - \chi_{\varepsilon, M}\|_{L^1({\mathbb{R}}^d)\cap L^\infty({\mathbb{R}}^d)} = \|(\operatorname{\mathrm{Id}} - \mathbf{Q}_M)\chi_\varepsilon\|_{L^1({\mathbb{R}}^d)\cap L^\infty({\mathbb{R}}^d)} \ll \varepsilon N^{-\frac d4}. \end{align} $$

Since $\chi _\varepsilon $ is a Schwartz function, we have $M(\varepsilon ,N) = o(N)$ for each fixed $\varepsilon> 0$ .

By the definition (2.7) of $\chi _{\varepsilon , M}$ and choosing $M = M(\varepsilon , N) = o(N)$ possibly larger, we have

(2.9) $$ \begin{align} \nonumber \| \chi_{\varepsilon,M}(\,\cdot + 2\pi m) \|_{L^\infty([-\pi,\pi)^d)} & = \sup_{x \in [-\pi,\pi)^d} M^{d} \int_{{\mathbb{R}}^d}\chi_\varepsilon(x+2\pi m - y) \mathcal{F}_{{\mathbb{R}}^d}^{-1}(\theta)(M y) dy \\ & \lesssim \frac {M^d }{\langle Mm \rangle^{2d+1} } \ll \frac{\varepsilon}{\langle m \rangle^{d}}, \end{align} $$

uniformly in $m \in \mathbb {Z}^d\setminus \{0\}$ , where the penultimate step follows from $\operatorname *{\mathrm {supp}} \chi _\varepsilon \subset [- \pi , \pi )^d$ and the fact that $\theta $ is a Schwartz function. Then, from the periodicity of $f_N$ , $\operatorname *{\mathrm {supp}} \chi _\varepsilon \subset [- \pi , \pi )^d$ , (2.8) and (2.9), we obtain

$$ \begin{align*} & \| (\chi_{\varepsilon} - \chi_{\varepsilon,M})f_N \|_{L^4({{\mathbb{R}}}^d, \frac{dx}{(2\pi)^d)}}\\ & = \bigg(\frac{1}{(2\pi)^d}\sum_{m \in {\mathbb{Z}}^d} \int_{[-\pi,\pi)^d} (\chi_{\varepsilon} - \chi_{\varepsilon,M})^4(x + 2\pi m) | f_N(x)|^4 dx\bigg)^{\frac{1}{4}}\\ & \le \| f_N \|_{L^4({{\mathbb{T}}}^d)} \bigg( \|\chi_\varepsilon - \chi_{\varepsilon, M}\|_{L^\infty([-\pi,\pi)^d)}^4 + \sum_{m \in {\mathbb{Z}}^d\setminus\{0\}} \| \chi_{\varepsilon,M}^4(\,\cdot + 2\pi m) \|_{L^\infty([-\pi,\pi)^d)}^4 \bigg)^{\frac{1}{4}} \\ & \ll \varepsilon \| f_N \|_{L^4({{\mathbb{T}}}^d)}. \end{align*} $$

As a consequence, we have

(2.10) $$ \begin{align} \nonumber & \| (\chi_{\varepsilon}^2 - \chi_{\varepsilon,M}^2 )f_N \|_{L^4({\mathbb{R}}^d, \frac{dx}{(2\pi)^d})\cap L^2({\mathbb{R}}^d, \frac{dx}{(2\pi)^d})}\\ \nonumber & \le \| \chi_{\varepsilon} - \chi_{\varepsilon,M} \|_{L^\infty({\mathbb{R}}^d)\cap L^4({\mathbb{R}}^d, \frac{dx}{(2\pi)^d} )}\\ & \quad \times \bigg(2 \| \chi_{\varepsilon} f_N \|_{L^4({\mathbb{R}}^d, \frac{dx}{(2\pi)^d})}+ \| (\chi_{\varepsilon} - \chi_{\varepsilon,M})f_N \|_{L^4({\mathbb{R}}^d, \frac{dx}{(2\pi)^d})}\bigg)\\ \nonumber & \ll \varepsilon N^{-\frac{d}{4}} \| f_N \|_{L^4({\mathbb{T}}^d)}. \end{align} $$

Hence, from (2.6) and (2.10), we have

(2.11) $$ \begin{align} (1-2\varepsilon)\|f_N\|_{L^4({\mathbb{T}}^d)} \le \| \chi_{\varepsilon,M}^2f_N \|_{L^4({\mathbb{R}}^d, \frac{dx}{(2\pi)^d})} \le (1+\varepsilon)\|f_N\|_{L^4({\mathbb{T}}^d)} \end{align} $$

for any small $\varepsilon> 0$ , uniformly in $N \in \mathbb {N}$ .

Define the function $g_N, g_{N,M}:{\mathbb {R}}^d \to \mathbb {C}$ by setting

(2.12) $$ \begin{align} g_N(x) = \frac 1{N^{{\frac{d}{2}}}} \chi_\varepsilon^2\Big(\frac xN\Big)f_N\Big(\frac x N\Big) \qquad \text{and} \qquad g_{N,M}(x) = \frac 1{N^{{\frac{d}{2}}}} \chi_{\varepsilon,M}^2\Big(\frac xN\Big) f_N\Big(\frac x N\Big). \end{align} $$

Then, from (2.11) and (2.12), we have

(2.13) $$ \begin{align} N^{\frac{d}{4}} \|g_{N,M}\|_{L^4({\mathbb{R}}^d, \frac{dx}{(2\pi)^d)}} = \| \chi_{\varepsilon,M}^2f_N \|_{L^4({\mathbb{R}}^d, \frac{dx}{(2\pi)^d)}} \ge (1-2\varepsilon)\|f_N\|_{L^4({\mathbb{T}}^d)}. \end{align} $$

By Hölder’s inequality and (2.10) with (2.3) and (2.4), we have

$$ \begin{align*} \|g_N - g_{N,M}\|_{L^2({\mathbb{R}}^d, \frac{dx}{(2\pi)^d)}} &= \| (\chi_\varepsilon^2 - \chi_{\varepsilon,M}^2)f_N \|_{L^2({\mathbb{R}}^d, \frac{dx}{(2\pi)^d)}} \\ & \ll \varepsilon. \end{align*} $$

Noting that $\|g_N\|_{L^2({\mathbb {R}}^d, \frac {dx}{(2\pi )^d)}} = \|\chi _\varepsilon ^2f_N \|_{L^2({\mathbb {T}}^d)} \le 1$ , we then obtain

(2.14) $$ \begin{align} \|g_{N,M}\|_{L^2({\mathbb{R}}^d, \frac{dx}{(2\pi)^d)}} \le (1+\varepsilon). \end{align} $$

Finally, recalling that the Fourier support of $f_N = \pi _N f $ (as a function on ${\mathbb {T}}^d$ ) is contained in $\{n \in \mathbb {Z}^d |n| \le N\}$ and the Fourier support of $\chi _{\varepsilon ,M}$ (as a function on ${\mathbb {R}}^d$ is contained in $\{\xi \in {\mathbb {R}}^d: |\xi | \le 2M\}$ and that $M(\varepsilon ,N) = o(N)$ , it follows from (2.12) that

(2.15) $$ \begin{align} \operatorname*{\mathrm{supp}}(\widehat g_{N,M}) \subset \bigg\{ \xi \in {\mathbb{R}}^d : |\xi| \le \frac{N+2M}{N}\bigg\} \subset \big\{ \xi \in {\mathbb{R}}^d : |\xi| \le 1 + o(1) \big\}. \end{align} $$

Therefore, from (2.13) and (the scaled version of) (1.26) with (2.15) followed by (2.14), we conclude that

$$ \begin{align*} N^{-d}\|f_N\|_{L^4({\mathbb{T}}^d)}^4 & \le (1 -2 \varepsilon)^{-4} \|g_{N,M}\|_{L^4({\mathbb{R}}^d, \frac{dx}{(2\pi)^d})}^4 \\ & \le (1-2\varepsilon)^{-4}4 C_B (1 +o(1)) \|g_{N,M}\|_{L^2({\mathbb{R}}^d, \frac{dx}{(2\pi)^d})}^4 \\ & \le \bigg(\frac{1+\varepsilon}{1-2\varepsilon}\bigg)^4 C_B (1 +o(1)). \end{align*} $$

Since $\varepsilon>0 $ is arbitrary, by taking the $\limsup $ as $N\to \infty $ , we obtain (2.5).

2.2 Tools from stochastic analysis

Next, we recall the Wiener chaos estimate (Lemma 2.3). For this purpose, we first recall basic definitions from stochastic analysis; see [Reference Bogachev6, Reference Shigekawa59]. Let $(H, B, \nu )$ be an abstract Wiener space. Namely, $\nu $ is a Gaussian measure on a separable Banach space B with $H \subset B$ as its Cameron–Martin space. Given a complete orthonormal system $\{e_j \}_{ j \in \mathbb {N}} \subset B^*$ of $H^* = H$ , we define a polynomial chaos of order k to be an element of the form $\prod _{j = 1}^\infty H_{k_j}(\langle x, e_j \rangle )$ , where $x \in B$ , $k_j \ne 0$ for only finitely many j’s, $k= \sum _{j = 1}^\infty k_j$ , $H_{k_j}$ is the Hermite polynomial of degree $k_j$ as in (1.7), and $\langle \cdot , \cdot \rangle = \vphantom {|}_B \langle \cdot , \cdot \rangle _{B^*}$ denotes the B- $B^*$ duality pairing. We then denote the closure of polynomial chaoses of order k under $L^2(B, \nu )$ by $\mathcal {H}_k$ . The elements in $\mathcal {H}_k$ are called homogeneous Wiener chaoses of order k. We also set

$$ \begin{align*} \mathcal{H}_{\leq k} = \bigoplus_{j = 0}^k \mathcal{H}_j \end{align*} $$

for $k \in \mathbb {N}$ .

Let $L = \Delta -x \cdot \nabla $ be the Ornstein–Uhlenbeck operator.Footnote 16 Then, it is known that any element in $\mathcal H_k$ is an eigenfunction of L with eigenvalue $-k$ . Then, as a consequence of the hypercontractivity of the Ornstein–Uhlenbeck semigroup $U(t) = e^{tL}$ due to Nelson [Reference Nelson39], we have the following Wiener chaos estimate [Reference Simon60, Theorem I.22].

Lemma 2.3. Let $k \in \mathbb {N}$ . Then, we have

$$ \begin{align*} \|X \|_{L^p(\Omega)} \leq (p-1)^{\frac{k}{2}} \|X\|_{L^2(\Omega)} \end{align*} $$

for any $p \geq 2$ and any $X \in \mathcal {H}_{\leq k}$ .

Lemma 2.4. Let $\nu _N$ be the law of $I_N \stackrel {\mathrm {def}}{=} \int _{{\mathbb {T}}^d}:\! u_N^2(x) \!: dx$ , where u is as in (1.3) and $u_N = \pi _N u$ . Then, for every $N \in \mathbb {N}$ , $\nu _N$ is absolutely continuous with respect to the Lebesgue measure $\lambda $ on ${\mathbb {R}}$ . Moreover, we have

(2.16) $$ \begin{align} \bigg\|\frac{d\nu_N}{d\lambda} \bigg\|_{L^\infty({\mathbb{R}})} \lesssim 1, \end{align} $$

uniformly in $N \in \mathbb {N}$ . As a consequence, we have

(2.17) $$ \begin{align} \mu \bigg(\int_{{\mathbb{T}}^d}:\! u^2(x) \!: dx = K\bigg) = 0 \end{align} $$

for any $K \in {\mathbb {R}}$ , where $\mu $ is the log-correlated Gaussian free field defined in (1.2).

Proof. By the definition (1.6) of $:\! u_N^2 \!: \,$ with (1.3), we have

$$ \begin{align*} \int_{{\mathbb{T}}^d} :\! u_N^2(x) \!: dx & = \sum_{0 \le |n|\le N} \frac{|g_n|^2 - 1}{\langle n \rangle^d} \\ & = \sum_{0\le|n|\le 1} \frac{|g_n|^2-1}{\langle n \rangle^d}+ \sum_{2\le|n|\le N} \frac{|g_n|^2-1}{\langle n \rangle^d} \\& =: A_1 + A_{2, N} \end{align*} $$

with the understanding that $A_{2, N} = 0$ when $N = 1$ . Because of independence of the Gaussians $\{g_n\}_{|n|>2}$ from $g_0$ and $g_1$ , the random variables $A_1$ and $A_{2, N}$ are independent. Note that the law $\mu _1$ of $A_1$ (and $\mu _{2, N}$ of $A_{2, N}$ when $N \ge 2$ , respectively) is absolutely continuous with respect to the Lebesgue measure $\lambda $ on ${\mathbb {R}}$ . Thus, we have $d \mu _1 = \sigma _1 d\lambda $ for some $\sigma _1 \in L^1({\mathbb {R}})$ (and $d \mu _{2, N} = \sigma _{2, N} d\lambda $ for some $ \sigma _{2, N} \in L^1({\mathbb {R}})$ when $N \ge 2$ , respectively).

We have

$$ \begin{align*} \sum_{0\le|n|\le 1} \frac{|g_n|^2-1}{\langle n \rangle^d} = (g_0^2- 1) + 2^{1-{\frac{d}{2}}}(|g_1|^2 -1). \end{align*} $$

Letting $\sigma _{10}$ (and $\sigma _{11}$ ) be the density for $g_0^2- 1$ (and $ 2^{1-{\frac {d}{2}}}(|g_1|^2 -1)$ , respectively), we have

$$\begin{align*}\sigma_1 = \sigma_{10} * \sigma_{11}.\end{align*}$$

Note that $g_0^2$ is a chi-square distribution of one degree of freedom and thus the density $\sigma _{10}$ for $g_0^2- 1$ is unbounded.Footnote 17 On the other hand, $2|g_1|^2 = 2(\operatorname *{\mathrm {Re}} g_1)^2 + 2(\operatorname *{\mathrm {Im}} g_1)^2$ is a chi-square distribution of two degrees of freedom and thus the density $\sigma _{11}$ for $ 2^{1-{\frac {d}{2}}}(|g_1|^2 -1)$ is bounded. Hence, by Young’s inequality, we have

$$ \begin{align*} \|\sigma_1\|_{L^\infty({\mathbb{R}})} = \|\sigma_{10}* \sigma_{11}\|_{L^\infty({\mathbb{R}})} \le \|\sigma_{10}\|_{L^1({\mathbb{R}})} \| \sigma_{11}\|_{L^\infty({\mathbb{R}})} <\infty, \end{align*} $$

which proves (2.16), when $N = 1$ . Next, we consider the case $N \ge 2$ . Denoting by $\sigma _{2n}$ the density for $ 2\langle n \rangle ^{-d}(|g_n|^2 -1)$ , by Young’s inequality, we have

(2.18) $$ \begin{align} \|\sigma_{2, N}\|_{L^1({\mathbb{R}})} = \| \sigma_{22} * \sigma_{23} * \cdots \sigma_{2N}\|_{L^1({\mathbb{R}})} \le \prod_{n = 2}^N \|\sigma_{2n}\|_{L^1({\mathbb{R}})} = 1, \end{align} $$

where the last equality holds since $\sigma _{2n}$ is a density of a probability measure. Hence, by Young’s inequality with (2.18), we have

$$ \begin{align*} \bigg\|\frac{d\nu_N}{d\lambda}\bigg\|_{L^\infty({\mathbb{R}})} &= \bigg\|\frac{d\operatorname{\mathrm{Law}}( A_1 + A_{2, N})}{d\lambda}\bigg\|_{L^\infty({\mathbb{R}})} \\ &= \| \sigma_1 \ast \sigma_{2, N}\|_{L^\infty({\mathbb{R}})} \\ &\le \| \sigma_1 \|_{L^\infty({\mathbb{R}})} \|\sigma_{2, N}\|_{L^1({\mathbb{R}})} \\ &= \| \sigma_1 \|_{L^\infty({\mathbb{R}})} \\ &\lesssim 1, \end{align*} $$

uniformly in $N \ge 2$ . This proves (2.16).

Let $I_\infty = \int _{{\mathbb {T}}^d}:\! u^2(x) \!: dx$ . Since $I_N$ converges to $I_\infty $ in law (see, for example, [Reference Oh and Thomann47, Proposition 1.1]), it follows from the Portmanteau theorem and (2.16) that

$$ \begin{align*} \mathbb{P}(I_\infty = K) & \le \mathbb{P}\big(I_\infty \in (K-\varepsilon, K+\varepsilon)\big) \le \liminf_{N\to \infty} \mathbb{P}\big(I_N \in (K-\varepsilon, K+\varepsilon)\big) \\ & = \liminf_{N\to \infty} \nu_N\big( (K-\varepsilon, K+\varepsilon)\big)\\ & \le \sup_{N \in \mathbb{N}} \bigg\|\frac{d\nu_N}{d\lambda}\bigg\|_{L^\infty({\mathbb{R}})} \cdot \lambda \big( (K-\varepsilon, K+\varepsilon)\big)\\ & \lesssim \varepsilon \end{align*} $$

for any $\varepsilon> 0$ . Since the choice of $\varepsilon> 0$ was arbitrary, we then conclude (2.17).

3 Nonnormalizability of the focusing Gibbs measure with the quartic interaction

In this section, we present the proof of the nonnormalizability of the log-correlated Gibbs measure with the focusing quartic interaction (Theorem 1.4).

3.1 Variational formulation

In order to prove (1.24) and (1.27), we use a variational formula for the partition function as in [Reference Tolomeo and Weber64, Reference Oh, Okamoto and Tolomeo41]. Let us first introduce some notations. Fix a a probability space $(\Omega , \mathcal {F}, \mathbb P)$ . Let $W(t)$ be a cylindrical Brownian motion in $L^2({\mathbb {T}}^d)$ . Namely, we have

(3.1) $$ \begin{align} W(t) = \sum_{n \in \mathbb{Z}^d} B_n(t) e_n, \end{align} $$

where $\{B_n\}_{n \in \mathbb {Z}^d}$ is a sequence of mutually independent complex-valuedFootnote 18 Brownian motions such that $\overline {B_n}= B_{-n}$ , $n \in \mathbb {Z}^d$ . Then, define a centered Gaussian process $Y(t)$ by

(3.2) $$ \begin{align} Y(t) = \langle \nabla \rangle^{-{\frac{d}{2}}}W(t). \end{align} $$

Note that we have $\operatorname {\mathrm {Law}}(Y(1)) = \mu $ , where $\mu $ is the log-correlated Gaussian measure in (1.2). By setting $Y_N = \pi _NY $ , we have $\operatorname {\mathrm {Law}}(Y_N(1)) = (\pi _N)_*\mu $ , that is, the pushforward of $\mu $ under $\pi _N$ . In particular, we have ${\mathbb {E}} [Y_N^2(1)] = \sigma _N$ , where $\sigma _N$ is as in (1.5). Here, the expectation ${\mathbb {E}}$ is with respect to the underlying probability measure $\mathbb {P}$ .

Next, let $\mathbb {H}_a$ denote the space of drifts, which are progressively measurableFootnote 19 processes belonging to $L^2([0,1]; L^2({\mathbb {T}}^d))$ , $\mathbb {P}$ -almost surely. We now state the Boué–Dupuis variational formula [Reference Boué and Dupuis7, Reference Üstünel68]; in particular, see Theorem 7 in [Reference Üstünel68].

Lemma 3.1. Let Y be as in (3.2). Fix $N \in \mathbb {N}$ . Suppose that $F:C^\infty ({\mathbb {T}}^d) \to {\mathbb {R}}$ is measurable such that ${\mathbb {E}}\big [|F(\pi _NY(1))|^p\big ] < \infty $ and ${\mathbb {E}}\big [|e^{-F(\pi _NY(1))}|^q \big ] < \infty $ for some $1 < p, q < \infty $ with ${\frac {1}{p}} + {\frac {1}{q}} = 1$ . Then, we have

(3.3) $$ \begin{align} - \log {\mathbb{E}}\Big[e^{-F(\pi_N Y(1))}\Big] = \inf_{\theta \in \mathbb H_a} {\mathbb{E}}\bigg[ F(\pi_N Y(1) + \pi_N I(\theta)(1)) + {\frac{1}{2}} \int_0^1 \| \theta(t) \|_{L^2_x}^2 dt \bigg], \end{align} $$

where $I(\theta )$ is defined by

(3.4) $$ \begin{align} I(\theta)(t) = \int_0^t \langle \nabla \rangle^{-{\frac{d}{2}}} \theta(t') dt' \end{align} $$

and the expectation ${\mathbb {E}} = {\mathbb {E}}_{\mathbb {P}}$ is an expectation with respect to the underlying probability measure $\mathbb {P}$ .

In the following, we construct a drift $\theta $ depending on Y and the Boué–Dupuis variational formula (Lemma 3.1) is suitable for this purpose since an expectation in (3.3) is taken with respect to the underlying probability measure $\mathbb {P}$ . Compare this with the variational formula in [Reference Gunaratnam, Oh, Tzvetkov and Weber31], where an expectation is taken with respect to a shifted measure.

Before proceeding to the proof of Theorem 1.4, we state a lemma on the pathwise regularity bounds of $Y(1)$ and $I(\theta )(1)$ .

Lemma 3.2. (i) Let $\varepsilon> 0$ . Then, given any finite $p \ge 1$ , we have

(3.5) $$ \begin{align} {\mathbb{E}} \Big[ \|Y_N(1)\|_{W^{-\varepsilon,\infty}}^p + \|:\!Y_N^2(1)\!:\|_{W^{-\varepsilon,\infty}}^p + \big\| :\! Y_N^3(1) \!: \big\|_{W^{-\varepsilon,\infty}}^p \Big] \leq C_{\varepsilon, p} <\infty, \end{align} $$

uniformly in $N \in \mathbb {N}$ .

(ii) For any $\theta \in \mathbb {H}_a$ , we have

(3.6) $$ \begin{align} \| \hspace{0.5mm}\text{I}\hspace{0.5mm}(\theta)(1) \|_{H^{{\frac{d}{2}}}}^2 \leq \int_0^1 \| \theta(t) \|_{L^2}^2dt. \end{align} $$

Before proceeding to the proof of Lemma 3.2, recall the following orthogonality result [Reference Nualart40, Lemma 1.1.1]; let f and g be jointly Gaussian random variables with mean zero and variances $\sigma _f$ and $\sigma _g$ . Then, we have

(3.7) $$ \begin{align} {\mathbb{E}}\big[ H_k(f; \sigma_f) H_\ell(g; \sigma_g)\big] = \delta_{k\ell} k! \big\{{\mathbb{E}}[ f g] \big\}^k, \end{align} $$

where $H_k (x,\sigma )$ denotes the Hermite polynomial of degree k with variance parameter $\sigma $ .

Proof. Part (i) is a direct consequence of pathwise regularities of the log-correlated Gaussian process Y (and its Wick powers) whose law at time $t = 1$ is given by $\mu $ in (1.2). See, for example, [Reference Oh and Thomann48, Proposition 2.3] and [Reference Gubinelli, Koch and Oh29, Proposition 2.1] for related results when $d = 2$ . For readers’ convenience, we present details. Given $\varepsilon> 0$ and finite $p \ge 1$ , let $r \ge p$ such that $\varepsilon r> 2d$ . Then, from the Sobolev embedding theorem and Minkowski’s integral inequality, we have

(3.8) $$ \begin{align} \nonumber \Big\|\|:\!Y_N^k(1)\!:\|_{W^{-\varepsilon, \infty}}\Big\|_{L^p(\Omega)} & \lesssim \Big\|\|:\!Y_N^k(1)\!:\|_{W^{-{\frac{\varepsilon}{2}}, r}}\Big\|_{L^p(\Omega)}\\ & \leq\Big\|\|\langle \nabla \rangle^{-{\frac{\varepsilon}{2}}}:\!Y_N^k(1, x)\!:\|_{L^p(\Omega)}\Big\|_{L^r_x}. \end{align} $$

On the other hand, from (1.6) and (3.7) with (3.1) and (3.2), we have

$$ \begin{align*} {\mathbb{E}}\big[:\!Y_N^k(1, x)\!:\, :\!Y_N^k(1, y)\!:\big] & = k! \big\{{\mathbb{E}}[Y_N(1, x) Y_N(1, y)]\big\}^{k}\\ & = k!\sum_{\substack{n_1, \dots, n_k \in \mathbb{Z}^d\\ |n_j|\le N}} \prod_{j = 1}^k \frac{1}{\langle n_j \rangle^d} e_{n_1+ \cdots + n_k} (x - y). \end{align*} $$

By applying the Bessel potentials $\langle \nabla \rangle _x^{-{\frac {\varepsilon }{2}}}$ and $\langle \nabla \rangle _y^{-{\frac {\varepsilon }{2}}}$ of order $-\frac \varepsilon 2$ and then setting $x = y$ , we have

(3.9) $$ \begin{align} {\mathbb{E}}\big[|\langle \nabla \rangle^{-{\frac{\varepsilon}{2}}} :\!Y_N^k(1, x)\!:|^2\big] & = k!\sum_{\substack{n_1, \dots, n_k \in \mathbb{Z}^d\\ |n_j|\le N}} \prod_{j = 1}^k \frac{1}{\langle n_j \rangle^d\langle n_1+ \cdots + n_k \rangle^\varepsilon} \lesssim 1, \end{align} $$

uniformly in $N \in \mathbb {N}$ . Then, (3.5) follows from (3.8), Lemma 2.3 and (3.9).

As for Part (ii), the estimate (3.6) follows from (3.4), Minkowski’s inequality and Cauchy–Schwarz’s inequality. See the proof of Lemma 4.7 in [Reference Gunaratnam, Oh, Tzvetkov and Weber31] .

3.2 Proof of Theorem 1.4

In this subsection, we present the proof of Theorem 1.4. Let us first discuss the divergence (1.27) for any $K>0$ . Given $K, L> 0$ and $N \in \mathbb {N}$ , define $Z_{K,L,N}$ and $Z_{K,L}$ by

$$ \begin{align*} Z_{K,L,N} = {\mathbb{E}}_\mu\Big[\exp\big(\min{( R_N(u),L)} \big) \cdot \mathbf 1_{\{ |\int_{{\mathbb{T}}^d} \, : \, u_N^2 :\, dx | \le K\}} \Big] \end{align*} $$

and

$$ \begin{align*} Z_{K,L} = {\mathbb{E}}_\mu\Big[\exp\big(\min{( R(u),L)} \big) \cdot \mathbf 1_{\{ |\int_{{\mathbb{T}}^d} \, : \, u^2 :\, dx | \le K\}} \Big]. \end{align*} $$

Then, by the monotone convergence theorem, we have

$$ \begin{align*}Z_K = \lim_{L\to \infty} Z_{K,L}.\end{align*} $$

Moreover, by the dominated convergence theorem together with the almost sure convergenceFootnote 20 of $R_N(u)$ (and $\int _{{\mathbb {T}}^d} : \! u_N^2 \!: dx$ ) to $R(u)$ (and $\int _{{\mathbb {T}}^d} : \! u^2 \!: dx$ , respectively) and Lemma 2.4 (which guarantees almost sure convergence of $\mathbf 1_{\{ |\int _{{\mathbb {T}}^d} \, : \, u_N^2 :\, dx | \le K\}}$ to $\mathbf 1_{\{ |\int _{{\mathbb {T}}^d} \, : \, u^2 :\, dx | \le K\}}$ ), we obtain

$$ \begin{align*}Z_{K,L} = \lim_{N \to \infty} Z_{K,L,N}.\end{align*} $$

Therefore, (1.27) follows once we prove the following divergence:

(3.10) $$ \begin{align} \lim_{L \to \infty} \liminf_{N \to \infty} Z_{K, L, N} = \infty, \end{align} $$

where $R_N(u)$ is as in (1.8) with $\lambda> 0$ and $k = 4$ .

Noting that

(3.11) $$ \begin{align} Z_{K, L, N} \ge {\mathbb{E}}_\mu\Big[\exp\Big(\min{( R_N(u),L)} \cdot \mathbf 1_{\{ |\int_{{\mathbb{T}}^d} \, : u_N^2 :\, dx | \le K\}}\Big) \Big] - 1, \end{align} $$

the divergence (3.10) (and thus (1.24)) follows once we prove

(3.12) $$ \begin{align} \lim_{L \to \infty} \liminf_{N \to \infty} {\mathbb{E}}_\mu\Big[\exp\Big(\min{( R_N(u),L)} \cdot \mathbf 1_{\{ |\int_{{\mathbb{T}}^d} \, : u_N^2 :\, dx | \le K\}}\Big) \Big] = \infty. \end{align} $$

By the Boué–Dupuis variational formula (Lemma 3.1), we have

(3.13) $$ \begin{align} \nonumber - \log & \, {{\mathbb{E}}_\mu \Big[\exp\Big(\min{( R_N(u),L)} \cdot \mathbf 1_{\{ |\int_{{\mathbb{T}}^d} \, : u_N^2 :\, dx | \le K\}}\Big) \Big]} \\ \nonumber &= \inf_{\theta \in \mathbb H_a} {\mathbb{E}}\bigg[ -\min\big( R_N(Y(1) + I(\theta)(1)),L\big)\\ &\hphantom{XXXXX} \times \mathbf 1_{\{ |\int_{{\mathbb{T}}^d} : (\pi_N Y(1))^2: + 2 (\pi _N Y(1)) (\pi_N I(\theta)(1)) + (\pi_N I(\theta)(1))^2 dx | \le K\}} \\ &\hphantom{XXXXX} \nonumber + {\frac{1}{2}} \int_0^1 \| \theta(t)\|_{L^2_x} ^2 dt \bigg], \end{align} $$

where $Y(1)$ is as in (3.2). Here, ${\mathbb {E}}_\mu $ and ${\mathbb {E}}$ denote expectations with respect to the Gaussian field $\mu $ in (1.2) and the underlying probability measure $\mathbb {P}$ , respectively. In the following, we show that the right-hand side of (3.13) tends to $-\infty $ as $N, L \to \infty $ . The main idea is to construct a drift $\theta $ such that $I(\theta )$ looks like ‘ $- Y(1) + $ a perturbation’, where the perturbation term is bounded in $L^2({\mathbb {T}}^d)$ but has a large $L^4$ -norm.Footnote 21

$\bullet $ Part 1: We first present several preliminary results. The proofs of Lemmas 3.3 and 3.4 are presented in Subsection 3.3. We first construct a perturbation term in the next lemma. Fix a large parameter $M \gg 1$ . Let $f: {\mathbb {R}}^d \to {\mathbb {R}}$ be a real-valued Schwartz function with $\|f\|_{L^2({\mathbb {R}}^d, \frac {dx}{(2\pi )^d})} = 1$ such that its Fourier transform $\widehat f$ is supported on $\{\xi \in {\mathbb {R}}^d: |\xi | \le 1 \}$ with $\widehat f(0) = 0$ . Define a function $f_M$ on ${\mathbb {T}}^d$ by

(3.14) $$ \begin{align} f_M = M^{-{\frac{d}{2}}} \sum_{\substack{n \in \mathbb{Z}^d \\ |n| \le M}} \widehat f\Big( {\frac{n}{M}} \Big) e_n, \end{align} $$

where $\widehat f = \mathcal {F}_{{\mathbb {R}}^d}(f)$ denotes the Fourier transform on ${\mathbb {R}}^d$ defined in (1.14). Then, a direct computation yields the following lemma.

Lemma 3.3. Let $\alpha> 0$ . Then, we have

(3.15) $$ \begin{align} \int_{\mathbb{T}^d} f_M^2 dx &= 1 + O( M^{-\alpha}), \end{align} $$
(3.16) $$ \begin{align} \int_{\mathbb{T}^d} f_M^4 dx &= M^d \|f\|_{L^4(\mathbb{R}^d, \frac{dx}{(2\pi)^d})}^4 + O(M^{-\alpha}) \sim M^d, \end{align} $$
(3.17) $$ \begin{align} \nonumber\int_{\mathbb{T}^d} (\langle \nabla \rangle^{-\alpha} f_M)^2 dx &\le C(f) M^{-d-2 + \max(d+ 2 -2\alpha, 0)}\\ & = \begin{cases} M^{-2\alpha}, & \text{for }\alpha \le {\frac{d}{2}} + 1,\\ M^{-d-2}, & \text{for }\alpha> {\frac{d}{2}} + 1. \end{cases} \end{align} $$

for any $M \gg 1$ and some constant $C(f)> 0$ .

See Lemma 5.13 in [Reference Oh, Okamoto and Tolomeo41] for an analogous result on the construction of a perturbation term. While Lemma 3.3 follows from a similar consideration, we present some details of the proof in Subsection 3.3.

In the next lemma, we construct an approximation $\zeta _M$ to Y in (3.2) by solving stochastic differential equations. Note that, in [Reference Oh, Okamoto and Tolomeo41], such an approximation of $Y(1)$ was constructed essentially by (a suitable frequency truncation of) $Y(\frac {1}{2})$ , which was sufficient to prove a divergence analogous to (3.12) for large $K \gg 1 $ . In order to prove the divergence (3.12) for any $K> 0$ , we need to establish a more refined approximation argument. For simplicity, we denote $Y(1)$ and $\pi _N Y(1)$ by Y and $Y_N$ , respectively, in the following.

Lemma 3.4. Given $ M\gg 1$ , define $\zeta _M$ by its Fourier coefficients as follows. For $|n| \leq M$ , $\widehat \zeta _M(n, t)$ is a solution of the following differential equation:

(3.18) $$ \begin{align} \begin{cases} d \widehat \zeta_{M}(n, t) = \langle n \rangle^{-{\frac{d}{2}}} M^{\frac{d}{2}} (\widehat Y(n, t)- \widehat \zeta_{M}(n, t)) dt \\ \widehat \zeta_{M}|_{t = 0} =0, \end{cases} \end{align} $$

and we set $\widehat \zeta _{M}(n, t) \equiv 0$ for $|n|> M$ . Then, $\zeta _M(t)$ is a centered Gaussian process in $L^2({\mathbb {T}}^d)$ , which is frequency localized on $\{|n| \le M \}$ , satisfying

(3.19) $$ \begin{align} &{\mathbb{E}} \big[ \zeta_M^2(x) \big] = \sigma_M(1 + o(1)) \sim \log M, \end{align} $$
(3.20) $$ \begin{align} &{\mathbb{E}}\bigg[ 2 \int_{{\mathbb{T}}^d} Y_N \zeta_M dx - \int_{{\mathbb{T}}^d} \zeta_M^2 dx \bigg] = \sigma_M(1 + o(1)) \sim \log M, \end{align} $$
(3.21) $$ \begin{align} &{\mathbb{E}} \bigg[ \Big| \int_{{\mathbb{T}}^d} :\! ( Y_N-\zeta_M)^2 \!: dx \Big|^2 \bigg] \lesssim M^{-d}\log M, \end{align} $$
(3.22) $$ \begin{align} &{\mathbb{E}}\bigg[\Big( \int_{{\mathbb{T}}^d} Y_N f_M dx \Big)^2\bigg] + {\mathbb{E}}\bigg[\Big( \int_{{\mathbb{T}}^d} \zeta_M f_M dx \Big)^2\bigg] \lesssim M^{-d}, \end{align} $$
(3.23) $$ \begin{align} &{\mathbb{E}}\bigg[\int_0^1 \Big\| {\frac{d}{ds}} \zeta_M(s) \Big\|^2_{H^{\frac{d}{2}}}ds\bigg] \lesssim M^d \end{align} $$

for any $N \ge M \gg 1$ , where $\zeta _M =\zeta _M|_{t = 1}$ and

(3.24) $$ \begin{align} :\! ( Y_N-\zeta_M)^2 \!: \, = ( Y_N-\zeta_M)^2 - {\mathbb{E}}\big[ ( Y_N-\zeta_M)^2 \big]. \end{align} $$

Here, (3.19) is independent of $x \in {\mathbb {T}}^d$ .

We now define $ \alpha _{M, N}$ by

(3.25) $$ \begin{align} \alpha_{M, N}= \frac{{\mathbb{E}} \bigg[ 2 \int_{{\mathbb{T}}^d}Y_N\zeta_M dx-\int_{{\mathbb{T}}^d}\zeta_M^2 dx \bigg]}{\int_{{\mathbb{T}}^d} f_M^2 dx} \end{align} $$

for $N\ge M \gg 1$ . Then, from (3.15) and (3.20), we have

(3.26) $$ \begin{align} \alpha_{M, N} = \sigma_M(1+o(1)) \sim \log M \end{align} $$

for any $N \ge M\gg 1$ .

$\bullet $ Part 2: In this part, we prove the divergence (3.12). For $M \gg 1$ , we set $f_M$ , $\zeta _M$ and $ \alpha _{M, N}$ as in (3.14), Lemma 3.4 and (3.25). For the minimization problem (3.13), we set a drift $\theta = \theta ^0$ by

(3.27) $$ \begin{align} \theta^0 (t) & = \langle \nabla \rangle^{{\frac{d}{2}}} \bigg( -\frac{d}{dt} \zeta_M(t) + \sqrt{ \alpha_{M, N}} f_M \bigg) \end{align} $$

such that

(3.28) $$ \begin{align} \Theta^0 = I(\theta^0)(1) = \int_0^1 \langle \nabla \rangle^{-{\frac{d}{2}}} \theta^0(t) \, dt = - \zeta_M + \sqrt{ \alpha_{M, N}} f_M. \end{align} $$

We also define $Q(u$ ) by

(3.29) $$ \begin{align} Q(u) = {\frac{1}{4}} \int_{{\mathbb{T}}^d} u^4 dx \qquad \text{and} \qquad Q_{{\mathbb{R}}^d}(v) = \frac{1}{4(2\pi)^d} \int_{{\mathbb{R}}^d} v^4 dx, \end{align} $$

for $u \in L^4({\mathbb {T}}^d)$ and $v\in L^4({\mathbb {R}}^d)$ , respectively.

Let us first make some preliminary computations. By Cauchy’s inequality, we have

(3.30) $$ \begin{align} \nonumber |\zeta_M(\sqrt{ \alpha_{M, N}} f_M)^3| &\le {\frac{\delta}{4}} \alpha_{M, N}^2 f_M^4 +\frac{1}{\delta} \alpha_{M, N} \zeta_M^2 f_M^2, \\ |\zeta_M^3 \sqrt{ \alpha_{M, N}} f_M | &\le {\frac{\delta}{4}} \zeta_M^4+\frac{ 1}{\delta} \alpha_{M, N}\zeta_M^2 f_M^2 \end{align} $$

for any $0<\delta <1$ . Then, from (3.28), (3.29) and (3.30), we have

(3.31) $$ \begin{align} \nonumber Q(\Theta^0) & - \alpha_{M, N}^2 Q(f_M) \\ &= - \int_{{\mathbb{T}}^d} \zeta_M(\sqrt{ \alpha_{M, N}} f_M)^3 dx + {\frac{3}{2}} \int_{{\mathbb{T}}^d} \zeta_M^2 (\sqrt{ \alpha_{M, N}} f_M)^2 dx \\ &\quad \nonumber - \int_{{\mathbb{T}}^d} \zeta_M^3 \sqrt{ \alpha_{M, N}} f_M dx + Q(\zeta_M) \\ \nonumber &\ge -\delta \alpha_{M, N}^2 Q(f_M) - C_\delta \alpha_{M, N}\int_{{\mathbb{T}}^d} \zeta_M^2 f_M^2 dx +(1-\delta) Q(\zeta_M) \\ \nonumber &\ge -\delta \alpha_{M, N}^2 Q(f_M) - C_\delta \alpha_{M, N} \int_{{\mathbb{T}}^d} \zeta_M^2f_M^2 dx\end{align} $$

for any $0<\delta <1$ . From (3.26), (3.19) in Lemma 3.4 and (3.15) in Lemma 3.3, we have

(3.32) $$ \begin{align} \nonumber {\mathbb{E}} \bigg[ \alpha_{M, N} \int_{{\mathbb{T}}^d} \zeta_M^2 f_M^2 dx \bigg] & = \alpha_{M, N} \int_{{\mathbb{T}}^d} {\mathbb{E}} [\zeta_M^2(x)] f_M^2(x) dx \\ &\sim (\log M)^2 \| f_M \|_{L^2}^2 \lesssim (\log M )^2 \end{align} $$

for any $N \ge M \gg 1$ . Therefore, it follows from (3.31), (3.32) and (3.26) with (3.29) and (3.16) that for any measurable set E with $\mathbb {P}(E)>0$ and any $L \gg \lambda \cdot \alpha _{M, N}^2 Q(f_M)$ , we have

(3.33) $$ \begin{align} \nonumber {\mathbb{E}} \Big[\min\big( \gamma \lambda Q(\Theta^0), L\big) \cdot \mathbf 1_E\Big] &\ge \gamma \lambda (1-\delta) \alpha_{M, N}^2 Q(f_M) \mathbb{P}(E) - \gamma C^{\prime}_\delta (\log M )^2 \\ &= \gamma \lambda (1-\delta) \sigma_M^2 M^d Q_{{\mathbb{R}}^d}(f)\mathbb{P}(E) (1 + o(1)) \end{align} $$

for any $N \ge M \gg 1$ .

Recall from (3.14) that $\widehat f_M$ is supported on $\{|n|\leq M\}$ . Then, by Lemma 3.2 (ii) with (3.28), (3.27), (3.23) in Lemma 3.4, (3.26) and (3.15) in Lemma 3.3, we have

(3.34) $$ \begin{align} \nonumber {\mathbb{E}} \big[ \| \Theta^0\|_{H^{\frac{d}{2}}}^2 \big] &\le {\mathbb{E}} \bigg[ \int_0^1 \|\theta^0(t)\|_{L^2}^2 dt \bigg] \\ &\lesssim {\mathbb{E}}\bigg[\int_0^1 \Big\| \frac{d}{ds} \zeta_M(s) \Big\|^2_{H^{\frac{d}{2}}}ds\bigg] + M^d \alpha_{M,N} \|f_M \|_{L^2}^2 \\ \nonumber &\lesssim M^d \log M. \end{align} $$

Lastly, recall the following identity (see [Reference Oh and Thomann48, (1.18)]):

(3.35) $$ \begin{align} H_k(x+y; \sigma ) & = \sum_{\ell = 0}^k \begin{pmatrix} k \\ \ell \end{pmatrix} x^{k - \ell} H_\ell(y; \sigma), \end{align} $$

which follows from a Taylor expansion with the differentiation rule [Reference Kuo32, p. 159]: $H_k(x;\sigma ) = k H_{k-1}(x;\sigma )$ . Then, from (1.8) with $k = 4$ and (3.35), we have

(3.36) $$ \begin{align} \nonumber R_N (Y + \Theta^0) & = {\frac{\lambda}{4}}\int_{{\mathbb{T}}^d} :\! Y_N^4 \!: dx + \lambda \int_{{\mathbb{T}}^d} :\! Y_N^3 \!: \Theta^0 dx+\frac {3\lambda}2\int_{{\mathbb{T}}^d} :\! Y_N^2 \!: (\Theta^0)^2 dx \\ &\hphantom{X} + \lambda\int_{{\mathbb{T}}^d} Y_N (\Theta^0)^3 dx + {\frac{\lambda}{4}}\int_{{\mathbb{T}}^d} (\Theta^0)^4 dx, \end{align} $$

where we used

(3.37) $$ \begin{align} \pi_N \Theta^0 = \Theta^0 \end{align} $$

for $N \ge M \ge 1$ . We now state a lemma, controlling the second, third and fourth terms on the right-hand side of (3.36). We present the proof of this lemma in Subsection 3.3.

Lemma 3.5. There exist small $\varepsilon>0$ and a constant $c_0=c_0(\varepsilon )>0$ such that for any $\delta>0$ , we have

(3.38) $$ \begin{align} \bigg| \int_{{\mathbb{T}}^d} :\! Y_N^3 \!: \Theta^0dx \bigg| &\le c(\delta) \| :\! Y_N^3 \!: \|_{W^{-\varepsilon,\infty}}^2 + \delta \| \Theta^0\|_{ H^{{\frac{d}{2}}}}^2, \end{align} $$
(3.39) $$ \begin{align} \bigg| \int_{{\mathbb{T}}^d} :\! Y_N^2 \!: (\Theta^0)^2 dx \bigg| &\le c(\delta) \| :\! Y_N^2 \!: \|_{W^{-\varepsilon,\infty}}^4 + \delta \Big( \| \Theta^0\|_{ H^{{\frac{d}{2}}}}^2 + \| \Theta^0 \|_{L^4}^4 \Big), \end{align} $$
(3.40) $$ \begin{align} \bigg| \int_{{\mathbb{T}}^d} Y_N (\Theta^0)^3 dx\bigg| &\le c(\delta) \| Y_N \|_{W^{-\varepsilon,\infty}}^{c_0}+ \delta \Big( \| \Theta^0\|_{ H^{{\frac{d}{2}}}}^2 + \| \Theta^0 \|_{L^4}^4 \Big), \end{align} $$

uniformly in $N \in \mathbb {N}$ .

Fix small $\delta _0> 0$ . Then, from (3.36) and Lemma 3.5, we have

(3.41) $$ \begin{align} \nonumber R_N(Y + \Theta^0) &\ge (1-\delta_0) \lambda Q(\Theta^0) \\ & \quad - c(\delta_0)\lambda \Big( \| :\! Y_N^3 \!: \|_{W^{-\varepsilon,\infty}}^2 + \|:\! Y_N^2 \!:\|_{W^{-\varepsilon,\infty}}^4 + \|Y_N\|_{W^{-\varepsilon,\infty}}^{c_0} \Big) \\ \nonumber &\quad -c\delta_0 \lambda \|\Theta^0\|_{H^{\frac{d}{2}}}^2- |R_N(Y)|. \end{align} $$

We are now ready to put everything together. With (3.37) in mind, suppose that for any $K>0$ and small $\delta _1>0$ , there exists $M_0=M_0(K,\delta _1) \geq 1$ such that

(3.42) $$ \begin{align} \mathbb{P}\bigg( \Big|\int_{{\mathbb{T}}^d} (:{Y_N^2}: + 2 Y_N \Theta^0 + (\Theta^0)^2) dx \Big| \le K \bigg) \ge 1 - \delta_1, \end{align} $$

uniformly in $N \ge M \ge M_0$ . Then, it follows from (3.13), (3.41), (3.33), Lemma 3.2 (3.34), (1.9) (controlling $|R_N(Y)|$ , uniformly in $N \in \mathbb {N}$ ), and (3.26) with (3.37) that there exist constants $C_1, C_2> 0 $ such that

(3.43) $$ \begin{align} -\log & \, {\mathbb{E}}_\mu\Big[\exp\Big(\min{( R_N(u),L)} \cdot \mathbf 1_{\{ |\int_{{\mathbb{T}}^d} \, : u_N^2 :\, dx | \le K\}}\Big) \Big] \notag \\ &\le {\mathbb{E}}\bigg[ -\min\big( R_N(Y + \Theta^0),L\big)\notag \\ & \hphantom{XXX}\times \mathbf 1_{\{ |\int_{{\mathbb{T}}^d} ( :{Y_N^2}: + 2 Y_N \Theta^0 + (\Theta^0)^2) dx | \le K\}} + {\frac{1}{2}} \int_0^1 \| \theta^0(t)\|_{L^2_x} ^2 dt \bigg] \notag \\ &\le {\mathbb{E}}\bigg[ -\min\big((1-\delta_0) \lambda Q(\Theta^0),L\big) \cdot \mathbf 1_{\{ |\int_{{\mathbb{T}}^d} ( :{Y_N^2}: + 2 Y_N \Theta^0 + (\Theta^0)^2) dx | \le K\}} \notag \\ &\hphantom{XXX} + c(\delta_0)\lambda \Big( \| :\! Y_N^3 \!: \|_{W^{-\varepsilon,\infty}}^2 + \|:\! Y_N^2 \!:\|_{W^{-\varepsilon,\infty}}^4 + \|Y_N\|_{W^{-\varepsilon,\infty}}^{c_0} \Big) \notag \\ &\hphantom{XXX} + c\delta_0\lambda\|\Theta^0\|_{H^{{\frac{d}{2}}}}^2 + |R_N(Y)| + {\frac{1}{2}} \int_0^1 \| \theta^0(t)\|_{L^2_x} ^2 dt \bigg] \notag \\ &\le -(1-\delta_0)(1-\delta)(1-\delta_1)\lambda \alpha_{M,N}^2M^d Q_{{\mathbb{R}}^d}(f)(1+o(1)) \notag \\ & \quad + C_1(\delta_0,\lambda) M^d \log M+ C_2(\delta_0,\lambda) \notag \\ &= -(1-\delta_0)(1-\delta)(1-\delta_1)\lambda \sigma_M^2M^dQ_{{\mathbb{R}}^d}(f)(1+o(1)) \end{align} $$

for any $N \ge M \ge M_0(K,\delta _1)$ and $L \gg \lambda \cdot \alpha _{M, N}^2 Q(f_M)\sim \lambda M^d (\log M)^2$ . Therefore, we obtain

(3.44) $$ \begin{align} \nonumber \lim_{L \to \infty} & \liminf_{N \to \infty} {\mathbb{E}}_\mu\Big[\exp\Big(\min{(\lambda R_N(u),L)} \Big) \cdot \mathbf 1_{\{ |\int_{{\mathbb{T}}^d} \, : u_N^2 :\, dx | \le K\}} \Big] \\ \ge&~ \exp\Big( (1-\delta_0)(1-\delta)(1-\delta_1)\lambda \sigma_{M}^2M^dQ_{{\mathbb{R}}^d}(f) (1+o(1))\Big) \longrightarrow \infty, \end{align} $$

as $M \to \infty $ . This proves (3.12) by assuming (3.42).

It remains to prove (3.42) for any $K> 0$ and small $\delta _1>0$ . From (3.28), we have

(3.45) $$ \begin{align} \nonumber &{\mathbb{E}} \bigg[ \Big|\int_{{\mathbb{T}}^d} \Big( :{Y_N^2}: + 2 Y_N \Theta^0 + (\Theta^0)^2 \Big) dx \Big|^2 \bigg]\\ &= {\mathbb{E}} \bigg[ \Big|\int_{{\mathbb{T}}^d} :{Y_N^2}: dx - 2 \int_{{\mathbb{T}}^d} Y_N \zeta_M dx+\int_{{\mathbb{T}}^d} \zeta_M^2 dx+ \alpha_{M, N} \int_{{\mathbb{T}}^d} f_M^2 dx \\ &\hphantom{X} \nonumber+ 2 \sqrt{ \alpha_{M, N}} \int_{{\mathbb{T}}^d} (Y_N-\zeta_M)f_M dx \Big|^2 \bigg]. \end{align} $$

From (3.26) and (3.22) in Lemma 3.4, we have

(3.46) $$ \begin{align} {\mathbb{E}} \bigg[ \Big| \sqrt{ \alpha_{M, N}} \int_{{\mathbb{T}}^d} (Y_N-\zeta_M)f_M dx \Big|^2 \bigg] \lesssim M^{-d} \log M. \end{align} $$

On other hand, from (3.25) and (3.24), we have

(3.47) $$ \begin{align} \nonumber \int_{{\mathbb{T}}^d} & :\!Y_N^2\!: dx - 2 \int_{{\mathbb{T}}^d} Y_N \zeta_M dx+\int_{{\mathbb{T}}^d} \zeta_M^2 dx+ \alpha_{M, N} \int_{{\mathbb{T}}^d} f_M^2 dx \\ & =\int_{{\mathbb{T}}^d} (Y_N-\zeta_M)^2 -{\mathbb{E}} \big[(Y_N-\zeta_M )^2 \big] dx \\ \nonumber & =\int_{{\mathbb{T}}^d} :\! ( Y_N-\zeta_M)^2 \!: dx. \end{align} $$

Hence, from (3.45), (3.46) and (3.47) with (3.21) in Lemma 3.4, we obtain

$$ \begin{align*} {\mathbb{E}} \bigg[ \Big|\int_{{\mathbb{T}}^d} \Big( :{Y_N^2}: + 2 Y_N \Theta^0 + (\Theta^0)^2 \Big) dx \Big|^2 \bigg]\lesssim M^{-d }\log M. \end{align*} $$

Therefore, by Chebyshev’s inequality, given any $K{\kern-1pt}>{\kern-1pt} 0$ and small $\delta _1{\kern-1pt}>{\kern-1pt} 0$ , there exists $M_0 {\kern-1pt}={\kern-1pt} M_0(K, \delta _1) {\kern-1pt}\geq{\kern-1pt} 1$ such that

$$ \begin{align*} \mathbb{P}\bigg( \Big|\int_{{\mathbb{T}}^d} (:{Y_N^2}: + 2 Y_N \Theta^0 + (\Theta^0)^2) dx \Big|> K \bigg) &\le C\frac{M^{-d} \log M}{K^2} < \delta_1 \end{align*} $$

for any $M \ge M_0 (K,\delta _1)$ . This proves (3.42).

$\bullet $ Part 3: In this last part, we establish the exact divergence rate (1.25) of $Z_{K, N}$ . From (3.44) with $M=N$ , we already have

(3.48) $$ \begin{align} \log Z_{K, N} \ge (1-\delta_0)(1-\delta)(1-\delta_1)\lambda \sigma_N^2N^dQ_{{\mathbb{R}}^d}(f)(1+o(1)) \end{align} $$

as $N\to \infty $ , for any small $\delta ,\delta _0,\delta _1> 0$ and any Schwartz function f with $\|f\|_{L^2({\mathbb {R}}^d, \frac {dx}{(2\pi )^d})} = 1$ , $\operatorname *{\mathrm {supp}}(\widehat {f}) \subset \{ |\xi |\le 1\}$ and $\widehat f(0) = 0$ . Since Schwartz functions with $\operatorname *{\mathrm {supp}}(\widehat {f}) \subset \{ |\xi |\le 1\}$ and $\widehat f(0) = 0$ are dense in $L^2({\mathbb {R}}^d) \cap \big \{f: \operatorname *{\mathrm {supp}}(\widehat {f}) \subset \{ |\xi |\le 1\}\big \}$ , there exists a sequence $\{f_n\}_{n \in \mathbb {N}}$ of Schwartz functions with $\|f_n\|_{L^2({\mathbb {R}}^d, \frac {dx}{(2\pi )^d})} = 1$ and $\operatorname *{\mathrm {supp}}(\widehat f_n) \subset \{ |\xi |\le 1\}$ which are almost optimizers for Bernstein’s inequality (1.26) on ${\mathbb {R}}^d$ , namely, we have

$$ \begin{align*}\lim_{n \to \infty} Q_{{\mathbb{R}}^d}(f_n) = \frac{C_B}{4}.\end{align*} $$

Therefore, by inserting $f_n$ in (3.48) and taking $n \to \infty $ and $\delta ,\delta _0,\delta _1 \to 0$ , we obtain

(3.49) $$ \begin{align} \liminf_{N\to\infty} \frac{\log Z_{K, N}}{\sigma_N^2 N^d} \ge \lambda \frac{C_B}{4}. \end{align} $$

Hence, it remains to prove the upper bound. In view of (3.13), we have

(3.50) $$ \begin{align} \nonumber \log Z_{K, N}&\le \sup_{\theta \in \mathbb{H}_a}{\mathbb{E}}\bigg[ R_N(Y + \Theta)\\ \nonumber &\hphantom{XXX} \times \mathbf 1_{\{ |\int_{{\mathbb{T}}^d} ( :{Y_N^2}: + 2 Y_N \Theta_N + \Theta_N^2) dx | \le K\}} - {\frac{1}{2}} \int_0^1 \| \theta(t)\|_{L^2_x} ^2 dt \bigg]\\ \nonumber & \le \sup_{\theta \in \mathcal{L}^2_{t,x}} {\mathbb{E}}\bigg[ R_N(Y+\Theta) \\ &\hphantom{XXX} \times \mathbf 1_{\{ |\int_{{\mathbb{T}}^d} ( :{Y_N^2}: + 2 Y_N \Theta_N + (\Theta_N)^2) dx | \le K\}} - {\frac{1}{2}} \int_0^1 \| \theta(t)\|_{L^2_x} ^2 dt \bigg]\\ \nonumber & \le \sup_{\Theta \in \mathcal{H}_x^{{\frac{d}{2}}} } {\mathbb{E}}\bigg[ R_N(Y+\Theta) \cdot \mathbf 1_{\{ |\int_{{\mathbb{T}}^d} ( :{Y_N^2}: + 2 Y_N \Theta_N + (\Theta_N)^2) dx | \le K\}} - {\frac{1}{2}} \| \Theta_N \|^2_{H^{{\frac{d}{2}}}} \bigg], \end{align} $$

where $\Theta = I(\theta )(1)$ in the first two lines and $\Theta _N = \pi _N \Theta $ . Here, the space $\mathcal {L}^2_{t,x}$ denotes the space of drifts, which are stochastic processes belonging to $ L^2([0,1]; L^2({\mathbb {T}}^d)) \mathbb {P}$ -almost surely (namely, they do not have be adapted), and the space $\mathcal {H}_x^{{\frac {d}{2}}}$ denotes the space of $H^{{\frac {d}{2}}}({\mathbb {T}}^d)$ -valued random variables.

For any $\Theta \in \mathcal {H}_x^{\frac {d}{2}} $ , let $V = Y+ \Theta $ . Then, with $V_N = \pi _N V$ , we have

(3.51) $$ \begin{align} \Theta_N=-Y_N+V_N, \end{align} $$

and thus we see that

(3.52) $$ \begin{align} \int_{{\mathbb{T}}^d} ( :{Y_N^2}: + 2 Y_N \Theta_N + \Theta_N^2) dx \le K \quad \text{is equivalent to}\quad \int_{{\mathbb{T}}^d} V_N^2 dx \le K +\sigma_N, \end{align} $$

where $\sigma _N={\mathbb {E}}\big [Y_N^2\big ]$ is as in (1.5). Hence, from (3.50), a change of variables $\Theta _N=-Y_N+V_N$ , (3.52) and the almost optimal Bernstein inequality (Lemma 2.2), we have

(3.53) $$ \begin{align} \nonumber \log Z_{K, N} &\le \sup_{\Theta \in \mathcal{H}_x^{\frac{d}{2}} } {\mathbb{E}}\bigg[ R_N(Y+\Theta) \cdot \mathbf 1_{\{ |\int_{{\mathbb{T}}^d} ( :{Y_N^2}: + 2 Y_N \Theta_N + (\Theta_N)^2) dx | \le K\}} \bigg]\\ & \le \sup_{V_N \in \mathcal{H}_x^{\frac{d}{2}}} {\mathbb{E}}\bigg[ R_N(V) \nonumber \cdot \mathbf 1_{\{ \int_{{\mathbb{T}}^d} V_N^2 dx \le K +\sigma_N \}} \bigg] \\ & \le \sup_{V_N \in \mathcal{H}_x^{\frac{d}{2}}} {\mathbb{E}}\bigg[ \lambda \frac{C_{\text{B}} }{4} N^d (1+o(1)) \| V_N \|_{L^2}^4 \cdot \mathbf 1_{\{ \int_{{\mathbb{T}}^d} V_N^2 dx \le K +\sigma_N \}} \bigg] + O(\lambda \sigma_N^2) \\ \nonumber & \le \lambda \frac{C_{B}}{4} N^d (1+o(1)) (K+\sigma_N)^2 + O(\lambda \sigma_N^2) = \lambda \frac{C_{B}}{4} N^d \sigma_N^2(1+o(1)) \end{align} $$

as $N\to \infty $ , where, in the third step, we used

$$\begin{align*}R_N(V) = \frac{\lambda}{4}V_N^4 - \frac{3\lambda}{2} \sigma_N V_N^2 + \frac{3\lambda}{4} \sigma_N^2\le \frac{\lambda}{4} V_N^4 + \frac{3\lambda}{4}\sigma_N^2.\end{align*}$$

Therefore, combining this with (3.49), we conclude (1.25).

Remark 3.6. The perturbation (at the level of $\Theta ^0$ in (3.28)) is given by $f_M$ (modulo the logarithmic factor $\sqrt {\alpha _{M, N}}$ ). We point out that Lemma 3.3 shows that $f_M$ looks like a highly concentrated profile whose $L^4$ -norm (in fact, any $L^p$ -norm for $p> 2$ ) blows up while its $L^2$ -norm is $O(1)$ as $M \to \infty $ . Note that the blowup of $L^4$ -norm (3.16) was crucially used in (3.33), which led to the desired divergence rate $M^d (\log M)^2$ in (3.44). Moreover, the uniform (in M) bound (3.15) on the $L^2$ -norm $f_M$ played an essential role in (3.32) and (3.34) to guarantee that the terms in (3.32) and (3.34) grow at a slower rate than $M^d (\log M)^2$ .

3.3 Proofs of the auxiliary lemmas

In this subsection, we present the proofs of Lemmas 3.3, 3.4 and 3.5.

We first briefly discuss the proof of Lemma 3.3.

Proof of Lemma 3.3.

Define a function $F_M$ on ${\mathbb {R}}^d$ by setting

$$\begin{align*}F_M(x) = M^{\frac{d}{2}} f(Mx).\end{align*}$$

Then, from the Poisson summation formula (1.13) with (3.14), we have

(3.54) $$ \begin{align} f_M(x) = \sum_{m\in \mathbb{Z}^d} F_M(x+2\pi m) = \sum_{m\in \mathbb{Z}^d} T_mf(x), \end{align} $$

where $T_m f(x) = M^{\frac {d}{2}} f(M(x+2\pi m))$ .

Recall our convention of the normalized Lebesgue measure on ${\mathbb {T}}^d$ . Since f is a Schwartz function, we have

(3.55) $$ \begin{align} \nonumber \int_{{\mathbb{T}}^d} (T_0f(x))^k dx & = \frac{M^{d( {\frac{k}{2}} - 1)}}{(2\pi)^d}\int_{{\mathbb{R}}^d} \mathbf 1_{[-\pi M, \pi M)^d}(x)f^k(x) dx\\[5pt] & = \frac {M^{d( {\frac{k}{2}} - 1)}}{(2\pi)^d}\int_{{\mathbb{R}}^d}f^k(x) dx + O(M^{-\alpha}) \end{align} $$

for any $\alpha> 0$ . On the other hand, from (3.54), for $k \in \mathbb {N}$ , we have

(3.56) $$ \begin{align} \nonumber \int_{{\mathbb{T}}^d} f_M^k(x) dx & = \int_{{\mathbb{T}}^d} \bigg(\sum_{m \in \mathbb{Z}^d} T_mf(x)\bigg)^k dx\\[5pt] & = \int_{{\mathbb{T}}^d} (T_0f)^k(x) dx + \text{l.o.t.}. \end{align} $$

Here, l.o.t. consists of the sum of the terms of the form

$$\begin{align*}\int_{{\mathbb{T}}^d} \prod_{j = 1}^k T_{m_j} f(x) dx,\end{align*}$$

where $m_j \ne 0$ for at least one j. It follows from the fast decay of the Schwartz function f that, for any $\kappa> 0$ , there exists $C> 0$ such that

$$ \begin{align*} |T_m f(x)| = M^{\frac{d}{2}} |f(M(x+2\pi m))| \le C (Mm)^{-\kappa} \end{align*} $$

for any $m \in \mathbb {Z}^d\setminus \{0\}$ ; see the proof of Lemma 5.13 in [Reference Oh, Okamoto and Tolomeo41]. As a consequence, by summing over $m_j \in \mathbb {Z}^d$ , $j = 1, \dots , k$ (not all zero), we obtain

(3.57) $$ \begin{align} |\,\text{l.o.t.}| \lesssim M^{-\alpha}. \end{align} $$

Therefore, from (3.55), (3.56) and (3.57) with $\|f\|_{L^2({\mathbb {R}}^d, \frac {dx}{(2\pi )^d})} = 1$ , we conclude (3.15) and (3.16).

Next, we prove (3.17). Since f is a Schwartz function with $\widehat f (0) = 0$ , it follows from the fundamental theorem of calculus that

(3.58) $$ \begin{align} |\widehat f(\xi)| = |\widehat f(\xi) - \widehat f(0)| \le C_f |\xi| \end{align} $$

for any $\xi \in {\mathbb {R}}^d$ . By Plancherel’s identity with (3.14) and (3.58), we have

$$ \begin{align*} \int_{{\mathbb{T}}^d} (\langle \nabla \rangle^{-\alpha} f_M)^2 dx & = M^{-d} \sum_{\substack{n \in \mathbb{Z}^d\\|n|\le M}}\Big|\widehat f\Big({\frac{n}{M}}\Big)\Big|^2 \frac{1}{\langle n \rangle^2\alpha}\\[5pt] & \le C^2_f M^{-d-2} \sum_{\substack{n \in \mathbb{Z}^d\\|n|\le M}} \frac{1}{\langle n \rangle^{2(\alpha-1)}}\\[5pt] & \lesssim C^2_f M^{-d-2 + \max(d+ 2 -2\alpha, 0)}. \end{align*} $$

This prove (3.17).

Next, we present the proof of the approximation lemma (Lemma 3.4).

Proof of Lemma 3.4.

Let

(3.59) $$ \begin{align} X_n(t)=\widehat Y_N(n, t)- \widehat \zeta_{M}(n, t), \quad |n|\le M. \end{align} $$

Then, from (3.2) and (3.18), we see that $X_n(t)$ satisfies the following stochastic differential equation:

$$ \begin{align*} \begin{cases} dX_n(t)=-\langle n \rangle^{-\frac{d}{2}}M^{\frac{d}{2}} X_n(t) dt +\frac{1}{\langle n \rangle^{\frac{d}{2}}}dB_n(t)\\ X_n(0)=0 \end{cases} \end{align*} $$

for $|n|\le M$ . By solving this stochastic differential equation, we have

(3.60) $$ \begin{align} X_n(t)=\frac{1}{\langle n \rangle^{\frac{d}{2}}}\int_0^t e^{-\langle n \rangle^{-\frac{d}{2}}M^{\frac{d}{2}}(t-s)}dB_n(s). \end{align} $$

Then, from (3.59) and (3.60), we have

(3.61) $$ \begin{align} \widehat \zeta_{M}(n, t)= \widehat Y_N(n, t)-\frac{1}{\langle n \rangle^{\frac{d}{2}} }\int_0^t e^{-\langle n \rangle^{-{\frac{d}{2}}}M^{\frac{d}{2}} (t-s)}dB_n(s) \end{align} $$

for $|n|\le M$ . Hence, from (3.61), the independence of $\{B_n \}_{n \in \mathbb {Z}^d}$ ,Footnote 22 Ito’s isometry and (3.2), we have

(3.62) $$ \begin{align} \nonumber{\mathbb{E}} \big[ |\zeta_M(x)|^2 \big]&=\sum_{|n| \le M} \bigg( {\mathbb{E}} \big[ | \widehat Y_N(n) |^2 \big] -\frac{2}{\langle n \rangle^d}\int_0^1 e^{-\langle n \rangle^{-\frac{d}{2}}M^{\frac{d}{2}} (1-s)}ds \\ & \hphantom{XXXXX} +\frac{1}{\langle n \rangle^d}\int_0^1 e^{-2\langle n \rangle^{-{\frac{d}{2}}}M^{\frac{d}{2}} (1-s)}ds \bigg)\\ \nonumber & = \sigma_M + O\Big(\sum_{|n|\le M }\frac{1}{\langle n \rangle^{\frac{d}{2}}}\cdot \frac{1}{M^{\frac{d}{2}}}\Big)\\ \nonumber & = \sigma_M(1 + o(1)) \end{align} $$

for any $M\gg 1$ . This proves (3.19).

By Parseval’s theorem, (3.61), (3.19) and proceeding as in (3.62), we have

$$ \begin{align*} {\mathbb{E}}\bigg[ 2 \int_{{\mathbb{T}}^d} Y_N & \zeta_M dx - \int_{{\mathbb{T}}^d} \zeta_M^2 dx \bigg] ={\mathbb{E}} \bigg[ 2 \sum_{|n| \le M }\widehat Y_N(n) \overline{ \widehat \zeta_M(n)} -\sum_{|n |\le M }| \widehat \zeta_M(n) |^2 \bigg]\\ &={\mathbb{E}} \bigg[ \sum_{|n | \le M } | \widehat \zeta_M(n) |^2+\sum_{|n|\leq M } \bigg( \frac{2}{\langle n \rangle^{\frac{d}{2}}} \int_0^1 e^{-\langle n \rangle^{-\frac{d}{2}}M^{\frac{d}{2}} (1-s) }dB_n(s) \bigg) \overline{\widehat \zeta_M(n)} \bigg]\\ &= \sigma_M(1 + o(1)) + O\Big(\sum_{|n| \le M } \frac{1}{\langle n \rangle^{\frac{d}{2}}}\cdot \frac{1}{M^{\frac{d}{2}}}\Big)\\ & = \sigma_M(1 + o(1)) \end{align*} $$

for any $N\ge M\gg 1$ . This proves (3.20).

Note that $\widehat Y(n)-\widehat \zeta _M(n)$ is a mean-zero Gaussian random variable. Then, from (3.61) and Ito’s isometry, we have

(3.63) $$ \begin{align} \nonumber {\mathbb{E}} \bigg[ \Big( |\widehat Y_N(n)- & \widehat \zeta_M(n)|^2-{\mathbb{E}}\big[ |\widehat Y(n)-\widehat \zeta_M(n)|^2 \big] \Big)^2 \bigg] \lesssim \Big({\mathbb{E}}\big[ |\widehat Y_N(n)-\widehat \zeta_M(n)|^2 \big] \Big)^2 \\ & = \frac{1}{\langle n \rangle^{2d} } \bigg(\int_0^1 e^{-2\langle n \rangle^{-\frac{d}{2}}M^{{\frac{d}{2}}}(1-s) } ds \bigg)^2 \sim \frac 1 {\langle n \rangle^{d} } \cdot \frac{1}{M^d}. \end{align} $$

Hence, from Plancherel’s identity, (3.24), the independence of $\{B_n \}_{n \in \mathbb {Z}^d}$ , the independence of $\big \{ |\widehat Y_N(n) |^2- {\mathbb {E}} \big [ | \widehat Y_N(n)|^2 \big ]\big \}_{M < |n|\le N}$ and

$$\begin{align*}\big\{ |\widehat Y_N(n)-\widehat \zeta_M(n)|^2-{\mathbb{E}}\big[ |\widehat Y_N(n)-\widehat \zeta_M(n)|^2\big]\big\}_{|n|\le M},\end{align*}$$

(3.2), and (3.63), we have

$$ \begin{align*} {\mathbb{E}} \bigg[ & \Big| \int_{{\mathbb{T}}^d} :\! ( Y_N-\zeta_M)^2 \!: dx \Big|^2 \bigg] \notag \\ &= \sum_{M<|n|\le N } {\mathbb{E}} \bigg[ \Big( |\widehat Y_N(n) |^2- {\mathbb{E}} \big[ | \widehat Y_N(n)|^2 \big] \Big)^2 \bigg]\notag \\ &\hphantom{XX}+ \sum_{|n|\le M} {\mathbb{E}} \bigg[ \Big( |\widehat Y_N(n)-\widehat \zeta_M(n)|^2-{\mathbb{E}}\big[ |\widehat Y_N(n)-\widehat \zeta_M(n)|^2 \big] \Big)^2 \bigg]\notag \\ &\lesssim \sum_{M<|n|\le N}\frac{1}{\langle n \rangle^{2d}} +\sum_{|n|\le M } \frac{1}{\langle n \rangle^{d}} \frac{1}{M^d} \lesssim M^{-d}\log M. \end{align*} $$

This proves (3.21).

From (3.17) and (3.2), we have

(3.64) $$ \begin{align} \nonumber {\mathbb{E}}\bigg[ \Big( \int_{{\mathbb{T}}^d} Y_N f_M dx \Big)^2\bigg] &= {\mathbb{E}} \bigg[ \Big( \sum_{|n| \le M} \widehat Y_N(n) \overline{ \widehat f_M(n)} \Big)^2 \bigg] = \sum_{|n| \le M} \frac{1}{\langle n \rangle^d} |\widehat f_M(n)|^2 \\ &\le \int_{{\mathbb{T}}^d} \big(\langle \nabla \rangle^{-{\frac{d}{2}}} f_M (x)\big)^2 dx \lesssim M^{-d}. \end{align} $$

From (3.60), Ito’s isometry and (3.17), we have

(3.65) $$ \begin{align} \nonumber {\mathbb{E}} \bigg[ \Big( \sum_{|n| \le M} X_n(1) \overline{ \widehat f_M(n)} \Big)^2 \bigg] &={\mathbb{E}} \Bigg[ \bigg|\sum_{|n|\leq M} \bigg( \frac{1}{\langle n \rangle^{\frac{d}{2}}} \int_0^1 e^{-\langle n \rangle^{-\frac{d}{2}} M^{{\frac{d}{2}}}(1-s) } dB_n(s) \bigg) \widehat f_M(n) \bigg|^2 \Bigg]\\ &\lesssim M^{-{\frac{d}{2}}}\sum_{|n| \leq M} \frac{1}{\langle n \rangle^{\frac{d}{2}} }| \widehat f_M(n)|^2\\ \nonumber & \lesssim M^{-d}. \end{align} $$

Hence, (3.22) follows from (3.64) and (3.65) with (3.61).

Lastly, from (3.18), (3.59) and (3.60) and Ito’s isometry, we have

$$ \begin{align*} {\mathbb{E}}\bigg[\int_0^1 \Big\| \frac{d}{ds} \zeta_M(s) \Big\|^2_{H^{\frac{d}{2}}}ds\bigg] &= M^d {\mathbb{E}}\bigg[\int_0^1 \Big\| \pi_M(Y_N(s)) - \zeta_M(s) \Big\|^2_{L^2}ds\bigg] \\ &= M^d {\mathbb{E}}\bigg[ \int_0^1 \Big(\sum_{|n| \le M} |X_n(s)|^2\Big) ds\bigg]\\ &=M^d \sum_{|n| \le M} \frac{1}{\langle n \rangle^{d}} \int_0^1 \int_0^s e^{-2\langle n \rangle^{-{\frac{d}{2}}}M^{{\frac{d}{2}}}(s-s')} d s' ds \\ & \lesssim M^d \sum_{|n| \le M } \frac{1}{\langle n \rangle^{{\frac{d}{2}}}}\cdot \frac{1}{M^{{\frac{d}{2}}}}\\ & \lesssim M^d, \end{align*} $$

yielding (3.23). This completes the proof of Lemma 3.4.

Finally, we present the proof of Lemma 3.5.

Proof of Lemma 3.5.

From the duality and Cauchy’s inequality, we have

(3.66) $$ \begin{align} \nonumber \bigg| \int_{{\mathbb{T}}^d} :\! Y_N^3 \!: \Theta^0 dx \bigg| &\le \| :\! Y_N^3 \!:\|_{W^{-\varepsilon,\infty}} \| \Theta^0\|_{W^{\varepsilon,1} }\le \| :\! Y_N^3 \!:\|_{W^{-\varepsilon,\infty}} \| \Theta^0\|_{H^{\frac{d}{2}}}\\ &\le c(\delta)\| :\! Y_N^3 \!:\|_{W^{-\varepsilon,\infty}}^2 + \delta \| \Theta^0\|_{H^{\frac{d}{2}}}^2. \end{align} $$

This yields (3.38).

From the fractional Leibniz rule (Lemma 2.1 (ii)), we have

(3.67) $$ \begin{align} \nonumber \bigg| \int_{{\mathbb{T}}^d} :\! Y_N^2 \!: (\Theta^0)^2 dx \bigg| & \le \| :\! Y_N^2 \!:\|_{W^{-\varepsilon,\infty}} \|(\Theta^0)^2\|_{W^{\varepsilon, 1}}\\ & \leq \| :\! Y_N^2 \!:\|_{W^{-\varepsilon,\infty}} \|(\Theta^0)^2\|_{W^{\varepsilon, \frac{4}{3}}}\\ \nonumber & \lesssim \| :\! Y_N^2 \!:\|_{W^{-\varepsilon,\infty}}\|\Theta^0\|_{H^{\frac{d}{2}}}\|\Theta^0\|_{L^4}. \end{align} $$

Then, the second estimate (3.39) follows from Young’s inequality.

Lastly, we consider (3.40). From the fractional Leibniz rule (Lemma 2.1 (ii)) (with $\frac {1}{1+\delta } = \frac {1}{2+\delta _0} + \frac {1}{4} + \frac {1}{4}$ for small $\delta , \delta _0> 0$ ), Sobolev’s inequality, and the interpolation (Lemma 2.1 (i)), we have

(3.68) $$ \begin{align} \nonumber \bigg| \int_{{\mathbb{T}}^d} Y_N (\Theta_N^0)^3 dx \bigg| &\le \| Y_N \|_{W^{-\varepsilon,\infty}} \| \langle \nabla \rangle^{\varepsilon} (\Theta_N^0)^3\|_{L^{1+\delta}}\\ &\lesssim\| Y_N \|_{W^{-\varepsilon,\infty}} \| \Theta_N^0 \|_{W^{\varepsilon, 2+\delta_0}} \| \Theta_N^0 \|_{L^4}^2\\ \nonumber &\lesssim\| Y_N \|_{W^{-\varepsilon,\infty}} \| \Theta_N^0 \|_{H^{\frac{d}{2}}}^\beta \| \Theta_N^0 \|_{L^4}^{3-\beta} \end{align} $$

for some small $\beta> 0$ . Then, the third estimate (3.40) follows from Young’s inequality since $\frac {\beta }2 + \frac {3-\beta }4 < 1$ for small $\beta> 0$ . This completes the proof of Lemma 3.5.

4 Construction of the Gibbs measure with the cubic interaction

In this section, we present the proof of Theorem 1.9. We prove the uniform exponential integrability (1.32) via the variational formulation. Since the argument is identical for any finite $p \geq 1$ , we only present details for the case $p =1$ . Moreover, the precise value of $\lambda \in {\mathbb {R}}\setminus \{0\}$ does not play any role and thus we set $\lambda = 3$ in the following.

In view of the Boué–Dupuis formula (Lemma 3.1), it suffices to establish a lower bound on

(4.1) $$ \begin{align} \mathcal{W}_N(\theta) = {\mathbb{E}} \bigg[-R_N^\diamond(Y(1) + I(\theta)(1)) + \frac{1}{2} \int_0^1 \| \theta(t) \|_{L^2_x}^2 dt \bigg], \end{align} $$

uniformly in $N \in \mathbb {N}$ and $\theta \in \mathbb {H}_a$ . We set $Y_N = \pi _N Y = \pi _N Y(1)$ and $\Theta _N = \pi _N \Theta = \pi _N I(\theta )(1)$ .

From (1.30) and (3.35), we have

(4.2) $$ \begin{align} \nonumber R_N^\diamond (Y + \Theta) & = \int_{{\mathbb{T}}^d} :\! Y_N^3 \!: dx + 3\int_{{\mathbb{T}}^d} :\! Y_N^2 \!: \Theta_N dx+3 \int_{{\mathbb{T}}^d} Y_N \Theta_N^2 dx \\ &\hphantom{X} + \int_{{\mathbb{T}}^d} \Theta_N^3 dx - A \bigg\{ \int_{{\mathbb{T}}^d} \Big( :\! Y_N^2 \!: + 2 Y_N \Theta_N + \Theta_N^2 \Big) dx \bigg\}^2. \end{align} $$

Hence, from (4.1) and (4.2), we have

(4.3) $$ \begin{align} \nonumber \mathcal{W}_N(\theta) &={\mathbb{E}} \bigg[ -\int_{{\mathbb{T}}^d} :\! Y_N^3 \!: dx -3\int_{{\mathbb{T}}^d} :\! Y_N^2 \!: \Theta_N dx -3\int_{{\mathbb{T}}^d} Y_N \Theta_N^2 dx \\ &\hphantom{XXX} -\int_{{\mathbb{T}}^d} \Theta_N^3 dx + A \bigg\{ \int_{{\mathbb{T}}^d} \Big( :\! Y_N^2 \!: + 2 Y_N \Theta_N + \Theta_N^2 \Big) dx \bigg\}^2\\ \nonumber &\hphantom{XXX} + \frac{1}{2} \int_0^1 \| \theta(t) \|_{L^2_x}^2 dt \bigg]. \end{align} $$

In the following, we first state a lemma, controlling the terms appearing in (4.3). We present the proof of this lemma at the end of this section.

Lemma 4.1. (i) There exist small $\varepsilon>0$ and a constant $c>0$ such that

(4.4) $$ \begin{align} \bigg| \int_{{\mathbb{T}}^d} :\! Y_N^2 \!: \Theta_N dx \bigg| &\le c \| :\! Y_N^2 \!: \|_{W^{-\varepsilon,\infty}}^2 + \frac{1}{100} \| \Theta_N \|_{H^{\frac{d}{2}}}^2, \end{align} $$
(4.5) $$ \begin{align} \bigg| \int_{{\mathbb{T}}^d} Y_N \Theta_N^2 dx \bigg| &\le c \| Y_N \|_{W^{-\varepsilon,\infty}}^{6} + \frac{1}{100} \Big( \| \Theta_N \|_{H^{\frac{d}{2}}}^2 + \| \Theta_N \|_{L^2}^4 \Big), \end{align} $$
(4.6) $$ \begin{align} \bigg| \int_{{\mathbb{T}}^d} \Theta_N^3 dx \bigg| &\le \frac{1}{100} \| \Theta_N \|_{H^{\frac{d}{2}}}^2 + \frac{A}{100} \| \Theta_N \|_{L^2}^{4 } \end{align} $$

for any sufficiently large $A>0$ , uniformly in $N \in \mathbb {N}$ .

(ii) Let $A> 0$ . Given any small $\varepsilon> 0$ , there exists $c = c(\varepsilon , A)>0$ such that

(4.7) $$ \begin{align} \nonumber A\bigg\{ \int_{{\mathbb{T}}^d}& \Big( :\! Y_N^2 \!: + 2 Y_N \Theta_N + \Theta_N^2 \Big) dx \bigg\}^2 \\ &\ge {\frac{A}{4}} \| \Theta_N \|_{L^2}^4 - \frac{1}{100} \| \Theta_N \|_{H^{\frac{d}{2}}}^2 - c\bigg\{ \| Y_N \|_{W^{-\varepsilon,\infty}}^c + \bigg( \int_{{\mathbb{T}}^d} :\! Y_N^2 \!: dx \bigg)^2 \bigg\}, \end{align} $$

uniformly in $N \in \mathbb {N}$ .

As in [Reference Barashkov and Gubinelli3, Reference Gunaratnam, Oh, Tzvetkov and Weber31, Reference Oh, Robert, Sosoe and Wang45, Reference Oh, Okamoto and Tolomeo41], the main strategy is to establish a pathwise lower bound on $\mathcal {W}_N(\theta )$ in (4.3), uniformly in $N \in \mathbb {N}$ and $\theta \in \mathbb {H}_a$ , by making use of the positive terms:

(4.8) $$ \begin{align} \mathcal{U}_N(\theta) = {\mathbb{E}} \bigg[\frac{A}{4}\| \Theta_N\|_{L^2}^4 + \frac{1}{2} \int_0^1 \| \theta(t) \|_{L^2_x}^2 dt\bigg] \end{align} $$

coming from (4.3) and (4.7). From (4.3) and (4.8) together with Lemmas 4.1 and 3.2, we obtain

(4.9) $$ \begin{align} \inf_{N \in \mathbb{N}} \inf_{\theta \in \mathbb{H}_a} \mathcal{W}_N(\theta) \geq \inf_{N \in \mathbb{N}} \inf_{\theta \in \mathbb{H}_a} \Big\{ -C_0 + \frac{1}{10}\mathcal{U}_N(\theta)\Big\} \geq - C_0>-\infty. \end{align} $$

Then, the uniform exponential integrability (1.32) follows from (4.9) and Lemma 3.1. This proves Theorem 1.9.

We conclude this section by presenting the proof of Lemma 4.1.

Proof of Lemma 4.1.

(i) The estimate (4.4) follows from replacing $:\! Y_N^3 \!:$ in (3.66) by $:\! Y_N^2 \!:$ .

With small $\delta> 0$ , it follows from the fractional Leibniz rule (Lemma 2.1 (ii)) and Sobolev’s inequality as in (3.68) that

$$ \begin{align*} \bigg| \int_{{\mathbb{T}}^d} Y_N \Theta_N^2 dx \bigg| & \le \| Y_N\|_{W^{-\varepsilon,\infty}} \|\Theta_N^2\|_{W^{\varepsilon, 1+\delta}}\\ & \leq \| Y_N\|_{W^{-\varepsilon,\infty}} \|\Theta_N\|^2_{H^\varepsilon}\\ & \lesssim \| Y_N\|_{W^{-\varepsilon,\infty}} \|\Theta_N\|_{H^{\frac{d}{2}}}^{\beta} \|\Theta_N\|_{L^2}^{2-\beta} \end{align*} $$

for some small $\beta> 0$ . Then, the second estimate (4.5) follows from Young’s inequality since $\frac {\beta }{2} + \frac {2-\beta }{4} < 1$ .

As for the third estimate (4.6), it follows from Sobolev’s inequality, Lemma 2.1 (i) and Cauchy’s inequality that

$$ \begin{align*} \bigg| \int_{{\mathbb{T}}^d} \Theta_N^3 dx \bigg| &\le C \| \Theta_N \|_{H^{\frac{d}{6}}}^3 \le C \| \Theta_N \|_{H^{\frac{d}{2}}}\| \Theta_N \|_{L^2}^2 \\ &\le \frac{1}{100}\| \Theta_N \|_{H^{\frac{d}{2}}}^2 + \frac{A}{100} \| \Theta_N \|_{L^2}^4, \end{align*} $$

where $A>0$ is sufficiently large.

(ii) The bound (4.7) follows from a slight modification of Lemma 5.8 in [Reference Oh, Okamoto and Tolomeo41]. Noting that

$$ \begin{align*} (a+b+c)^2 \ge \frac{1}{2} c^2 - 2 (a^2+b^2) \end{align*} $$

for any $a,b,c \in {\mathbb {R}}$ , we have

(4.10) $$ \begin{align} \nonumber A\bigg\{ & \int_{{\mathbb{T}}^d} \Big( :\! Y_N^2 \!: + 2 Y_N \Theta_N + \Theta_N^2 \Big) dx \bigg\}^2 \\ &\ge \frac{A}{2} \bigg( \int_{{\mathbb{T}}^d} \Theta_N^2dx \bigg)^2 - 2A \bigg\{ \bigg( \int_{{\mathbb{T}}^d} :\! Y_N^2 \!: dx \bigg)^2 + \bigg( \int_{{\mathbb{T}}^d} Y_N \Theta_N dx \bigg)^2 \bigg\}. \end{align} $$

From Lemma 2.1 (i) and Young’s inequality, we have

(4.11) $$ \begin{align} \nonumber \bigg| \int_{{\mathbb{T}}^d} Y_N \Theta_N dx \bigg|^2 &\le \| Y_N \|_{W^{-\varepsilon,\infty}}^2 \| \Theta_N \|_{W^{\varepsilon,1}}^2 \le \| Y_N \|_{W^{-\varepsilon,\infty}}^2 \| \Theta_N \|_{H^\varepsilon}^2\\ &\lesssim \| Y_N \|_{W^{-\varepsilon,\infty}}^2 \| \Theta_N \|_{L^2}^{2-\frac{4\varepsilon}{d} } \| \Theta_N \|_{H^{\frac{d}{2}}}^{\frac {4\varepsilon}d} \\ \nonumber &\le c \| Y_N \|_{W^{-\varepsilon,\infty}}^{\frac{2d}{d-2\varepsilon}} + \frac 1{8} \| \Theta_N \|_{L^2}^4 + \frac1{200 A} \| \Theta_N \|_{H^{\frac{d}{2}}}^2. \end{align} $$

Hence, (4.7) follows from (4.10) and (4.11).

Remark 4.2. In considering the construction of the Gibbs measure with the cubic interaction, it is possible to consider the following renormalized potential energy with a general power $\gamma> 0$ on the Wick-ordered $L^2$ -norm:

(4.12) $$ \begin{align} R_N^{\diamond, \gamma} (u) &= \frac \lambda 3\int_{{\mathbb{T}}^d} :\! u_N^3 \!: dx - A \, \bigg( \int_{{\mathbb{T}}^d} :\! u_N^2 \!: dx\bigg)^\gamma, \end{align} $$

where the coupling constant $\lambda \in {\mathbb {R}}\setminus \{0\} $ denotes the strength of cubic interaction as in (1.30). When $\gamma = 2$ , $R_N^{\diamond , \gamma } (u)$ reduces to $R_N^\diamond (u)$ in (1.30).

In the following, let us briefly discuss the optimality of the power $\gamma = 2$ in Theorem 1.9. In view of (4.5) and (4.6), we need to control the term $\| \Theta _N \|_{L^2}^4$ , which forces us to choose $\gamma \ge 2$ in (4.12). When $\gamma = 2$ , it is also necessary to choose A sufficiently large because of (4.5). When $\gamma <2$ or when $\gamma =2$ and A is sufficiently small, the taming by the Wick-ordered $L^2$ -norm in (4.12) is too weak to control the terms mentioned above, and thus we expect an analogous nonnormalizability result to hold by repeating the proof of Theorem 1.4.

A On the Gibbs measure for the two-dimensional Zakharov system

In this appendix, we give a brief discussion on Gibbs measures for the following scalar Zakharov system on ${\mathbb {T}}^d$ :

(A.1) $$ \begin{align} \begin{cases} i \partial_t u +\Delta u = uw\\ c^{-2} \partial_t^2 w - \Delta w = \Delta(|u|^2). \end{cases} \end{align} $$

This is a coupled system of Schrödinger and wave equations. The unknown u for the Schrödinger part is complex-valued, while the unknown w for the wave part is real-valued. By introducing the velocity field $\vec v$ :

$$ \begin{align*} \partial_t w = - c^{2}\nabla \cdot \vec v, \end{align*} $$

we can rewrite (A.1) as

(A.2) $$ \begin{align} \begin{cases} i \partial_t u +\Delta u = uw\\ \partial_t w = - c^{2}\nabla \cdot \vec v\\ \partial_t \vec v = -\nabla w - \nabla (|u|^2). \end{cases} \end{align} $$

Note that (A.2) is a Hamiltonian system with the Hamiltonian

(A.3) $$ \begin{align} H(u, w, \vec v) = \frac{1}{2} \int_{{\mathbb{T}}^d} \big( |\nabla u|^2 + |u|^2 w \big) dx + \frac{1}{4} \int_{{\mathbb{T}}^d} w^2 dx + \frac{c^2}{4} \int_{{\mathbb{T}}^d} |\vec v|^2 dx. \end{align} $$

Moreover, the wave energy, namely, the $L^2$ -norm of the Schrödinger component:

$$ \begin{align*} M(u) = \int_{{\mathbb{T}}^d} |u|^2 dx \end{align*} $$

is known to be conserved. See [Reference Cher, Czubak and Sulem18].

By setting $W {\kern-1pt}={\kern-1pt} \frac {1}{\sqrt 2}w$ and $\vec V {\kern-1pt}={\kern-1pt} (V_1, \dots , V_d) {\kern-1pt}={\kern-1pt} \frac {c}{\sqrt 2}\vec v$ , we can rewrite the Hamiltonian in (A.3) as

(A.4) $$ \begin{align} H(u, W, \vec V) = \frac{1}{2} \int_{{\mathbb{T}}^d} \big(|\nabla u|^2 + \sqrt 2 |u|^2 W \big) dx + \frac{1}{2} \int_{{\mathbb{T}}^d} W^2 dx + \frac{1}{2} \int_{{\mathbb{T}}^d} |\vec V|^2 dx. \end{align} $$

Then, the Gibbs measure for the system (A.2) is formally given by

(A.5) $$ \begin{align} \nonumber d \rho & = Z^{-1} e^{- H(u, W, \vec V) - \frac 12 M(u)} du \, dW \, d \vec V\\ & = Z^{-1} e^{Q(u, W)} d\mu_{1}(u) d\mu_0(W) \prod_{j = 1}^d d \mu_0(V_j), \end{align} $$

where the potential $Q(u, W)$ is given by

(A.6) $$ \begin{align} Q(u, W) = - \frac{1}{\sqrt 2} \int_{{\mathbb{T}}^d} |u|^2 W dx, \end{align} $$

the measure $\mu _{1}$ denotes the complex-valued version of the massive Gaussian free field on ${\mathbb {T}}^d$ with the density formally given by

$$ \begin{align*} d \mu_1 = Z^{-1} e^{-\frac 12 \| u\|_{H^{1} }^2 } du & = Z^{-1} \prod_{n \in \mathbb{Z}^d} e^{-\frac 12 \langle n \rangle^2 |\widehat u(n)|^2} d\widehat u(n), \end{align*} $$

and $\mu _0$ denotes the white noise measure defined as the pushforward measure $\mu _0 = (\langle \nabla \rangle ^{\frac {d}{2}})_*\mu $ , with $\mu $ as in (1.2). In view of the conservation of the Hamiltonian $H(u, W, \vec V)$ and the wave energy $M(u)$ , the Gibbs measure $\rho $ in (A.5) expected to be invariant under the Zakharov dynamics.

As in the case of the focusing NLS, the main issue in constructing the Gibbs measure $\rho $ in (A.5) comes from the focusing nature of the potential, that is, the potential $Q(u, W)$ is unbounded from above. In a seminal paper [Reference Lebowitz, Rose and Speer33], Lebowitz, Rose and Speer constructed the Gibbs measure $\rho $ when $d = 1$ , by inserting a cutoff in terms of the conserved wave energy $M(u) = \|u\|_{L^2}^2$ , which was then proved to be invariant under (A.2) on ${\mathbb {T}}$ (and thus (A.1)) by Bourgain [Reference Bourgain9].

Then, a natural question is to consider the construction of the Gibbs measure $\rho $ in the two-dimensional setting.Footnote 23 Before doing this, let us recall the relation between the Zakharov system and the focusing cubic NLS. By sending the wave speed c in (A.1) to $\infty $ , the Zakharov system converges, at a formal level, to the focusing cubic NLS. See, for example, [Reference Ozawa and Tsutsumi51, Reference Masmoudi and Nakanishi37] for rigorous convergence results on ${\mathbb {R}}^d$ . When $d = 2$ , Theorem 1.4 states that the (renormalized) Gibbs measure for the focusing cubic NLS on ${\mathbb {T}}^2$ is not normalizable, even with a Wick-ordered $L^2$ -cutoff. This suggests that, when $d = 2$ , the Gibbs measure $\rho $ in (A.5) for the Zakharov system may not be constructible even with a Wick-ordered $L^2$ -cutoff on the Schrödinger component u.

Given $N \in \mathbb {N}$ , define the following renormalized truncated potential energy:

(A.7) $$ \begin{align} Q_N(u, W) = - \frac{1}{\sqrt 2} \int_{{\mathbb{T}}^2} :\! | u_N|^2 \!: W dx, \end{align} $$

where $u_N = \pi _N u $ as in Subsection 1.1 and $:\! | u_N|^2 \!: \, = | u_N|^2 -\sigma _N$ . We then define the renormalized truncated Gibbs measure $\rho _{N}$ on ${\mathbb {T}}^2$ , endowed with a Wick-ordered $L^2$ -cutoff, by

$$ \begin{align*} d \rho_N & = Z_N^{-1} \mathbf 1_{ \{|\int_{{\mathbb{T}}^2} : | u_N|^2 : dx| \le K\}} e^{Q_N(u, W)} d\mu_{1}(u) d\mu_0(W) \prod_{j = 1}^2 d \mu_0(V_j). \end{align*} $$

By integrating in $(V_1, V_2)$ and then in W, we have

(A.8) $$ \begin{align} \nonumber \iint & \mathbf 1_{ \{|\int_{{\mathbb{T}}^2} : | u_N|^2 : dx| \le K\}} e^{Q_N(u, W)} d\mu_0(W) \prod_{j = 1}^2 d \mu_0(V_j) \\ \nonumber & = \mathbf 1_{ \{|\int_{{\mathbb{T}}^2} : | u_N|^2 : dx| \le K\}} \int \exp\bigg(-\frac{1}{\sqrt 2} \sum_{n \in \mathbb{Z}^2} \mathcal{F}(: \!| u_N|^2 \!: )(n)\, \overline{\widehat W(n)} \bigg) d\mu_0(W) \\ & = \mathbf 1_{ \{|\int_{{\mathbb{T}}^2} : | u_N|^2 : dx| \le K\}} \int_{{\mathbb{R}}} \exp\bigg(-\frac{1}{\sqrt 2} \mathcal{F}(: \!| u_N|^2 \!: )(0)\, g_0\bigg) \frac{e^{-\frac 12 g_0^2}}{\sqrt {2\pi}} dg_0\\ \nonumber & \hphantom{X} \times \prod_{n \in \Lambda} \frac{1}{\pi}\int_{\mathbb{C}} \exp\bigg(-\sqrt 2 \operatorname*{\mathrm{Re}}\Big( \mathcal{F}( | u_N|^2 )(n)\, \overline{ g_n }\Big) \bigg) e^{-|g_n|^2}d g_n, \end{align} $$

where $\{ g_n \}_{n \in \mathbb {Z}^2}$ is as in (1.3)Footnote 24 and $\Lambda $ denotes the index set given by $\Lambda = (\mathbb {Z}\times \mathbb {Z}_+)\cup (\mathbb {Z}_+\times \{0\})$ such that $\mathbb {Z}^2 = \Lambda \cup (-\Lambda ) \cup \{0\}$ . Here, we used the fact that $\mathcal {F}(: \!| u_N|^2 \!: )(n) = \mathcal {F}(| u_N|^2 )(n)$ for $n \ne 0$ . Then, recalling the moment generating function ${\mathbb {E}}[e^{tX}] = e^{\frac 12 \sigma t^2}$ for $X \sim \mathcal {N}_{{\mathbb {R}}}(0, \sigma )$ , we have

(A.9) $$ \begin{align} \nonumber ({A.8}) & = \mathbf 1_{ \{|\int_{{\mathbb{T}}^2} : | u_N|^2 : dx| \le K\}} \exp\bigg( \frac 14 \big(\mathcal{F}(: \!| u_N|^2 \!: )(0)\big)^2 \bigg)\\ \nonumber & \hphantom{X} \times \prod_{n \in \Lambda} \frac{1}{\pi}\int_{\mathbb{C}} \exp\bigg(-\sqrt 2 \operatorname*{\mathrm{Re}} \! \big(\mathcal{F}( | u_N|^2 )(n)\big) \operatorname*{\mathrm{Re}} g_n \\ & \hphantom{XXXXXXXXXl} - \sqrt 2 \operatorname*{\mathrm{Im}}\! \big(\mathcal{F}( | u_N|^2 )(n) \big) \operatorname*{\mathrm{Im}} g_n \bigg) e^{-|g_n|^2}d g_n\\ \nonumber & \geq \mathbf 1_{ \{|\int_{{\mathbb{T}}^2} : | u_N|^2 : dx| \le K\}} \exp\bigg( \frac 14 \big\| \pi_{\ne 0} |u_N|^2 \big\|_{L^2}^2 - CK^2 \bigg), \end{align} $$

where $\pi _{\ne 0}$ is the projection onto nonzero frequencies.

Let $\{ h_n \}_{n \in \mathbb {Z}^2}$ be a sequence of mutually independent standard complex-valued Gaussian random variables. Then, we have

(A.10) $$ \begin{align} \int\big\| \pi_{\ne 0} |u_N|^2 \big\|_{L^2}^2 d \mu_1 \nonumber & = {\mathbb{E}}\Bigg[ \sum_{\substack{n_1 - n_2 + n_3 - n_4 = 0\\ |n_j| \leq N\\ n_1 - n_2 \ne 0}} \frac{h_{n_1}}{\langle n_1 \rangle} \frac{\overline{h_{n_2}}}{\langle n_2 \rangle} \frac{h_{n_3}}{\langle n_3 \rangle} \frac{\overline{h_{n_4}}}{\langle n_4 \rangle}\Bigg]\\ & = \sum_{|n_1 |\leq N} \frac{1}{\langle n_1 \rangle^2} \sum_{\substack{|n_3|\leq N\\n_3 \ne n_1}} \frac{1}{\langle n_3 \rangle^2} \sim (\log N)^2 \longrightarrow \infty, \end{align} $$

as $N \to \infty $ . Then, from (A.10), the interpolation of the $L^p$ -spaces and Lemma 2.3, we have

(A.11) $$ \begin{align} \nonumber \log N & \sim \big\| \| \pi_{\ne 0} |u_N|^2 \|_{L^2}\big\|_{L^2(\mu_1)} \ge \big \| \| \pi_{\ne 0} |u_N|^2 \|_{L^2}\big\|_{L^1(\mu_1)}\\ & \ge \frac{\big \| \| \pi_{\ne 0} |u_N|^2 \|_{L^2}\big\|_{L^2(\mu_1)}^3}{\big \| \| \pi_{\ne 0} |u_N|^2 \|_{L^2}\big\|_{L^4(\mu_1)}^2} \sim \log N. \end{align} $$

Also, from Lemma 2.3 and (1.5), we have

(A.12) $$ \begin{align} \big\|\| u_N \|_{L^4_x}\big\|_{L^2(\mu_1)} \lesssim \big\|\| u_N \|_{L^2(\mu_1) }\big\|_{L^4_x} \sim \sigma_N^{\frac{1}{2}} \sim (\log N)^{\frac{1}{2}}. \end{align} $$

Hence, given sufficiently small $ \varepsilon \gg \eta> 0$ , it follows from Lemma 3.1, Cauchy’s inequality, Sobolev’s inequality, (A.11) and (A.12) that

$$ \begin{align*} -\log & \bigg(\int \exp\Big(-\eta\big\|\pi_{\ne 0} |u_N|^2 \big\|_{L^2}\Big) d \mu_1(u)\bigg)\\ & = \inf_{\theta \in \mathbb H_a} {\mathbb{E}}\bigg[ \eta \big\| \pi_{\ne 0} |\pi_N Y(1) + \pi_N I(\theta)(1)|^2\big\|_{L^2} + {\frac{1}{2}} \int_0^1 \| \theta(t) \|_{L^2_x}^2 dt \bigg]\\ & \ge \inf_{\theta \in \mathbb H_a} {\mathbb{E}}\bigg[ \eta \Big(\big\| \pi_{\ne 0} |\pi_N Y(1)|^2 \big\|_{L^2} - 2\| \pi_N Y(1) \pi_N I(\theta)(1)\|_{L^2} \\ & \hphantom{XXXXX} - \|\pi_N I(\theta)(1)\|_{L^4}^2\Big) + {\frac{1}{2}} \int_0^1 \| \theta(t) \|_{L^2_x}^2 dt \bigg] \\ & \ge \inf_{\theta \in \mathbb H_a} {\mathbb{E}}\bigg[ \eta \Big(\big\| \pi_{\ne 0} |\pi_N Y(1)|^2 \big\|_{L^2} - \varepsilon \| \pi_N Y(1)\|_{L^4}^2\Big) + {\frac{1}{4}} \int_0^1 \| \theta(t) \|_{L^2_x}^2 dt \bigg]\\ & \gtrsim \eta (\log N). \end{align*} $$

Therefore, we obtain

$$ \begin{align*} \int \exp\Big(-\eta\big\|\pi_{\ne 0} |u_N|^2 \big\|_{L^2}\Big) d \mu_1(u) \le \exp(-c\eta \log N) \end{align*} $$

for some constant $c> 0$ . Then, by Chebyshev’s inequality, we conclude that, for any $M> 0$ ,

(A.13) $$ \begin{align} \mu_1\Big( \big\|\pi_{\ne 0} |u_N|^2 \big\|_{L^2}> M \Big) \ge 1 - \exp\big(\eta(M- c \log N) \big) \longrightarrow 1, \end{align} $$

as $N \to \infty $ .

We also note that, given any $K> 0$ , there exists a constant $c_K> 0$ such that

(A.14) $$ \begin{align} \mu_1\bigg(\Big|\int_{{\mathbb{T}}^2} : | u_N|^2 : dx \Big|\le K\bigg) \ge c_K, \end{align} $$

uniformly in $N \in \mathbb {N}$ . Indeed, for $L = L(K)> 0$ (to be chosen later), as in (3.11), we have

(A.15) $$ \begin{align} {\mathbb{E}}_{\mu_1} \big[ e^{L}\cdot \mathbf 1_{ \{|\int_{{\mathbb{T}}^2} : | u_N|^2 : dx| \le K\}}\big] \geq {\mathbb{E}}_{\mu_1} \Big[ \exp\big(L\cdot \mathbf 1_{ \{|\int_{{\mathbb{T}}^2} : | u_N|^2 : dx| \le K\}}\big) \Big] - 1. \end{align} $$

Now, by repeating the argument in Subsection 3.2, in particular, (3.34) and (3.42) with $M = M_0(K)$ , we have

(A.16) $$ \begin{align} \nonumber -\log & \, {\mathbb{E}}_{\mu_1} \Big[ \exp\big(L\cdot \mathbf 1_{ \{|\int_{{\mathbb{T}}^2} : | u_N|^2 : dx| \le K\}}\big) \Big] \\ &\le {\mathbb{E}}\bigg[ -L\cdot \mathbf 1_{\{ |\int_{{\mathbb{T}}^d} ( :{Y_N^2}: + 2 Y_N \Theta^0 + (\Theta^0)^2) dx | \le K\}} + \frac 12 \int_0^1 \| \theta^0(t)\|_{L^2_x} ^2 dt \bigg] \\ \nonumber &\le - \frac 12 L + C M_0^d \log M_0 \le - \frac 14 L \end{align} $$

by choosing $L = L(M_0) = L(K) \gg 1$ sufficiently large. From (A.15) and (A.16), we then obtain

$$ \begin{align*} \mu_1\bigg(\Big|\int_{{\mathbb{T}}^2} : | u_N|^2 : dx \Big|\le K\bigg) \ge \frac{e^{\frac 14 L} - 1}{e^L} =: c_K, \end{align*} $$

yielding (A.14).

Therefore, from (A.8), (A.9), (A.13) and (A.14), we obtain, for any $K> 0$ ,

$$ \begin{align*} \lim_{N \to \infty} & \iiint \mathbf 1_{ \{|\int_{{\mathbb{T}}^2} : | u_N|^2 : dx| \le K\}} e^{Q_N(u, W)} d\mu_{1}(u) d\mu_0(W) \prod_{j = 1}^2 d \mu_0(V_j)\\ & \ge \liminf_{N \to \infty} \int \mathbf 1_{ \{|\int_{{\mathbb{T}}^2} : | u_N|^2 : dx| \le K\}} \exp\bigg( \frac 14 \big\| \pi_{\ne 0} |u_N|^2 \big\|_{L^2}^2 - CK^2 \bigg) d\mu_{1}(u) \\ & \ge \liminf_{N \to \infty} \Big(c_K - \exp\big(\eta(M- c \log N)\big) \Big) \exp\bigg(\frac14 M^2 - CK^2\bigg) \\ & = c_K \exp\bigg(\frac14 M^2 - CK^2\bigg) \longrightarrow \infty \end{align*} $$

by taking $M \to \infty $ . This shows the nonnormalizability of the Gibbs measure for the Zakharov system on ${\mathbb {T}}^2$ even if we apply the Wick renormalization on the potential energy $Q(u, W)$ in (A.6) and endow the measure with a Wick-ordered $L^2$ -cutoff on the Schrödinger component.

Another way would be to apply a change of variables as in the one-dimensional case due to Bourgain [Reference Bourgain9]. Namely, rewrite the Hamiltonian in (A.4) as in the one-dimensional case by Bourgain [Reference Bourgain9]:

$$ \begin{align*} H(u, W, \vec V) = \frac{1}{2} \int_{{\mathbb{T}}^2} |\nabla u|^2 dx - \frac14 \int_{{\mathbb{T}}^2} |u|^4 dx + \frac{1}{2} \int_{{\mathbb{T}}^2} (W+ \sqrt 2|u|^2)^2 dx + \frac{1}{2} \int_{{\mathbb{T}}^2} |\vec V|^2 dx. \end{align*} $$

By introducing a new variable $\widetilde W = W+ \sqrt 2|u|^2$ , we arrive at

$$ \begin{align*} \widetilde H(u, \widetilde W, \vec V) = \frac{1}{2} \int_{{\mathbb{T}}^2} |\nabla u|^2 dx - \frac14 \int_{{\mathbb{T}}^2} |u|^4 dx + \frac{1}{2} \int_{{\mathbb{T}}^2} \widetilde W^2 dx + \frac{1}{2} \int_{{\mathbb{T}}^2} |\vec V|^2 dx. \end{align*} $$

Then, we apply the Wick renormalization to the potential energy.

In this formulation, we consider the renormalized truncated Gibbs measure $\widetilde \rho _{N}$ defined by

$$ \begin{align*} d \widetilde \rho_N & = Z_N^{-1} \mathbf 1_{ \{|\int_{{\mathbb{T}}^2} : | u_N|^2 : dx| \le K\}} e^{R_N(u)} d\mu_{1}(u) d\mu_0(\widetilde W) \prod_{j = 1}^2 d \mu_0(V_j), \end{align*} $$

where the renormalized truncated potential energy $R_N$ is defined by

$$ \begin{align*} R_N(u)=\frac 14\int_{{\mathbb{T}}^2} :\! |u_N|^4 \!: dx. \end{align*} $$

Note that, in the complex-valued setting, the Wick-ordered fourth power is given by

$$\begin{align*}:\! |u_N|^4 \!: \, = |u_N|^4 - 4\sigma_N |u_N|^2 + 2\sigma_N^2.\end{align*}$$

See [Reference Oh and Thomann47]. Then, by integrating in $\widetilde W$ and $\vec V$ and then by applying Theorem 1.4 (in the complex-valued setting), we have

$$ \begin{align*} \sup_{N \in \mathbb{N}} & \iiint \mathbf 1_{\{|\int : | u_N|^2 : dx| \le K\}} e^{R_N(u)} d\mu_{1}(u) d\mu_0(\widetilde W) \prod_{j = 1}^2 d \mu_0(V_j)\\ & = \sup_{N \in \mathbb{N}} \int \mathbf 1_{\{|\int : | u_N|^2 : dx| \le K\}} e^{R_N(u)} d\mu_{1}(u) = \infty \end{align*} $$

for any $K> 0$ . This shows the nonnormalizability of the limiting Gibbs measure in this formulation.

Remark A.1. In the renormalization (A.7), we added the term $\frac {\sigma _N}{\sqrt 2}\int _{{\mathbb {T}}^2}Wdx = \frac {\sigma _N}{2}\int _{{\mathbb {T}}^2}wdx$ . Note that the spatial mean of w is conserved under the flow of the system (A.2). Thus, by imposing the spatial mean-zero condition on w, we can write $Q_N(u, W)$ in (A.7) as

$$ \begin{align*} Q_N(u, W) = - \frac{1}{\sqrt 2} \int_{{\mathbb{T}}^2} :\! | u_N|^2 \!: W dx = - \frac{1}{\sqrt 2} \int_{{\mathbb{T}}^2} | u_N|^2 W dx, \end{align*} $$

showing that this term is self-renormalizing, and thus the renormalization (A.7) does not affect the system (A.2).

B Focusing quartic Gibbs measures with smoother Gaussian fields

In this appendix, we briefly discuss the construction of the focusing Gibbs measure $\rho _\alpha $ in (1.37) with a smoother base Gaussian measure $\mu _\alpha $ in (1.36). We only discuss the uniform exponential integrability bound (1.35). Since the precise value of $\lambda \in {\mathbb {R}}\setminus \{0\}$ does not play any role, we set $\lambda = 4$ in the following. As before, we also assume $p = 1$ for simplicity.

Fix $\alpha> \frac {d}{2}$ . The Gaussian measure $\mu _\alpha $ in (1.37) is the induced probability measure under the map:

$$ \begin{align*} \omega\in \Omega \longmapsto u(\omega) = \sum_{n \in \mathbb{Z}^d } \frac{ g_n(\omega)}{\langle n \rangle^\alpha} e_n, \end{align*} $$

where $\{ g_n \}_{n \in \mathbb {Z}^d}$ is as in (1.3). In particular, a typical function u in the support of $\mu $ belongs to $L^\infty ({\mathbb {T}}^d)$ .

We define $Y^\alpha $ by

$$ \begin{align*} Y^\alpha(t) = \langle \nabla \rangle^{-\alpha}W(t), \end{align*} $$

where W is as in (3.1). Then, in view of the Boué–Dupuis formula (Lemma 3.1), it suffices to establish a lower bound on

(B.1) $$ \begin{align} \mathcal{W}_N^\alpha(\theta) = {\mathbb{E}} \bigg[-R^{\diamond, \gamma}_N(Y^\alpha(1) + I^\alpha(\theta)(1)) + \frac{1}{2} \int_0^1 \| \theta(t) \|_{L^2_x}^2 dt \bigg], \end{align} $$

uniformly in $N \in \mathbb {N}$ and $\theta \in \mathbb {H}_a$ , where $R^{\diamond , \gamma }_N (u)$ and $I^\alpha (\theta )$ are defined by

(B.2) $$ \begin{align} R^{\diamond, \gamma}_N (u) &= \int_{{\mathbb{T}}^d} u_N^4 dx - A \, \bigg( \int_{{\mathbb{T}}^d} u_N^2 dx\bigg)^\gamma \end{align} $$

for some $\gamma>0$ (to be chosen later) and

$$ \begin{align*} I^\alpha(\theta)(t) = \int_0^t \langle \nabla \rangle^{-\alpha} \theta(t') dt'. \end{align*} $$

For simplicity of notation, we set $Y_N^\alpha = \pi _N Y^\alpha = \pi _N Y^\alpha (1)$ and $\Theta _N^\alpha = \pi _N \Theta ^\alpha = \pi _N I^\alpha (\theta )(1)$ .

From (B.1) and (B.2), we have

$$ \begin{align*} \mathcal{W}_N^{\alpha}(\theta) &={\mathbb{E}} \bigg[ -\int_{{\mathbb{T}}^d} (Y_N^\alpha)^4 dx -4\int_{{\mathbb{T}}^d} (Y_N^\alpha)^3 \Theta_N^\alpha dx -6\int_{{\mathbb{T}}^d} (Y_N^\alpha)^2 (\Theta_N^\alpha)^2 dx\\ &\hphantom{XXX} -4\int_{{\mathbb{T}}^d} Y_N^\alpha (\Theta_N^\alpha)^3 dx -\int_{{\mathbb{T}}^d} (\Theta_N^\alpha)^4 dx + A \bigg\{ \int_{{\mathbb{T}}^d} \big (Y_N^\alpha + \Theta_N^\alpha\big)^2 dx \bigg\}^2\\ &\hphantom{XXX} + \frac{1}{2} \int_0^1 \| \theta(t) \|_{L^2_x}^2 dt \bigg]. \end{align*} $$

Let us first state a lemma, analogous to Lemma 4.1.

Lemma B.1. (i) Let $\alpha> {\frac {d}{2}}$ . Then, there exists $c>0$ such that

(B.3) $$ \begin{align} \bigg| \int_{{\mathbb{T}}^d} ( Y_N^\alpha)^3 \Theta_N^\alpha dx \bigg| &\le c \| Y_N^\alpha \|_{L^\infty}^6 + \frac 1{100} \| \Theta_N^\alpha \|_{L^2}^2, \end{align} $$
(B.4) $$ \begin{align} \bigg| \int_{{\mathbb{T}}^d} (Y_N^\alpha)^2 (\Theta_N^\alpha)^2 dx \bigg| &\le c \| Y_N^\alpha \|_{L^\infty}^{4} + \frac 1{100} \| \Theta_N^\alpha \|_{L^2}^4, \end{align} $$
(B.5) $$ \begin{align} \bigg| \int_{{\mathbb{T}}^d} Y_N^\alpha (\Theta_N^\alpha)^3 dx \bigg| &\le c \| Y_N^\alpha \|_{L^\infty}^{4} + \frac 1{100} \| \Theta_N^\alpha \|_{L^4}^4, \end{align} $$
(B.6) $$ \begin{align} \bigg| \int_{{\mathbb{T}}^d} (\Theta_N^\alpha)^4 dx \bigg| &\le \frac 1{100} \| \Theta_N^\alpha \|_{H^\alpha}^2 + \frac{A}{100} \| \Theta_N^\alpha \|_{L^2}^{\frac{8\alpha - 2d}{2\alpha - d}} \end{align} $$

for any sufficiently large $A>0$ , uniformly in $N \in \mathbb {N}$ .

(ii) Let $A, \gamma> 0$ . Then, there exists $c = c(A, \gamma )>0$ such that

(B.7) $$ \begin{align} A\bigg\{ \int_{{\mathbb{T}}^d}& \big (Y_N^\alpha + \Theta_N^\alpha\big)^2 dx \bigg\}^\gamma \ge \frac A4 \| \Theta_N^\alpha \|_{L^2}^{2\gamma} - c \| Y_N^\alpha \|_{L^\infty}^{2\gamma}, \end{align} $$

uniformly in $N \in \mathbb {N}$ .

Set

(B.8) $$ \begin{align} \gamma = \frac {4\alpha- d}{2\alpha -d}. \end{align} $$

Then, by arguing as in Section 4 with Lemma B.1,Footnote 25 the almost sure $L^\infty $ -regularity of $Y^\alpha $ and a variant of (3.6) for $ \Theta ^\alpha = I^\alpha (\theta )(1)$ :

$$ \begin{align*} \| \Theta^\alpha \|_{H^{\alpha}}^2 \leq \int_0^1 \| \theta(t) \|_{L^2}^2dt, \end{align*} $$

we obtain the following uniform lower bound:

(B.9) $$ \begin{align} \inf_{N \in \mathbb{N}} \inf_{\theta \in \mathbb{H}_a} \mathcal{W}_N^\alpha(\theta) \geq - C_0>-\infty. \end{align} $$

Then, the uniform exponential integrability (1.35) follows from (B.9) and Lemma 3.1.

We now present the proof of Lemma B.1.

Proof of Lemma B.1.

(i) The estimates (B.3), (B.4) and (B.5) follow from Hölder’s and Young’s inequalities. As for the fourth estimate (B.6), it follows from Sobolev’s inequality, Lemma 2.1 (i) and Young’s inequality that

$$ \begin{align*} \bigg| \int_{{\mathbb{T}}^d} (\Theta_N^\alpha)^4 dx \bigg| &\le C \| \Theta_N^\alpha \|_{H^{\frac{d}{4}}}^4 \le C \| \Theta_N^\alpha \|_{H^\alpha}^{\frac{d}{\alpha}} \| \Theta_N^\alpha \|_{L^2}^{4 - \frac{d}{\alpha}} \\ &\le \frac{1}{100}\| \Theta_N^\alpha \|_{H^\alpha}^2+ \frac{A}{100} \| \Theta_N^\alpha \|_{L^2}^{\frac{8\alpha - 2d}{2\alpha - d}} \end{align*} $$

for sufficiently large $A> 0$ .

(ii) Note that

(B.10) $$ \begin{align} |a+b+c|^\gamma \ge \frac 12 |c|^\gamma - C_\gamma (|a|^\gamma+|b|^\gamma) \end{align} $$

for any $a,b,c \in {\mathbb {R}}$ . Then, the bound (B.7) follows from (B.10) and

$$ \begin{align*} \bigg| \int_{{\mathbb{T}}^d} Y_N^\alpha \Theta_N^\alpha dx \bigg|^\gamma &\le c \| Y_N^\alpha \|_{L^\infty}^{2\gamma} + \frac{1}{100C_\gamma} \| \Theta_N^\alpha \|_{L^2}^{2\gamma}.\\[-42pt] \end{align*} $$

Remark B.2. Let $\gamma $ be as in (B.8). Then, we have $\gamma> 2$ . Moreover, we have $\gamma \to \infty $ as $\alpha \to {\frac {d}{2}}+$ , indicating an issue at $\alpha = {\frac {d}{2}}$ even if we disregard a renormalization required for $\alpha = {\frac {d}{2}}$ .

Acknowledgments

K.S. would like to express his gratitude to the School of Mathematics at the University of Edinburgh for its hospitality during his visit, where this manuscript was prepared. The authors would like to thank the anonymous referees for the helpful comments which improved the quality of the paper.

Competing interest

The authors have no competing interest to declare.

Financial support

T.O. was supported by the European Research Council (grant no. 864138 ‘SingStochDispDyn’). K.S. was partially supported by National Research Foundation of Korea (grant NRF-2019R1A5A1028324). L.T. was funded by the Deutsche Forschungsgemeinschaft (DFG, German Research Foundation) under Germany’s Excellence Strategy-EXC-2047/1-390685813 through the Collaborative Research Centre (CRC) 1060.

Footnotes

1 In this introduction, we keep our discussion at a formal level and do not worry about renormalizations. While we keep the following discussion only to the real-valued setting, our results also hold in the complex-valued setting, where $k \ge 4$ is an even integer and $u^k$ in (1.1) is replaced by $|u|^k$ . See Footnote 6.

Hereafter, we use Z, $Z_{N}$ , etc. to denote various normalization constants whose values may change line by line.

2 In this paper, by ‘focusing’, we mean ‘nondefocusing’. Namely, $\lambda> 0$ or k is odd in (1.1).

3 By convention, we endow ${\mathbb {T}}^d$ with the normalized Lebesgue measure $dx_{{\mathbb {T}}^d}= (2\pi )^{-d} dx$ so that we do not need to worry about the factor $2\pi $ in various places. For simplicity of notation, we use $dx$ to denote the standard Lebesgue measure ${\mathbb {R}}^d$ and the normalized Lebesgue measure on ${\mathbb {T}}^d$ in the following.

4 In particular, $g_0$ is a standard real-valued Gaussian random variable. When $n \in \mathbb {N}$ , $\operatorname *{\mathrm {Re}} g_n$ and $\operatorname *{\mathrm {Im}} g_n$ are real-valued Gaussian random variables with mean 0 and variance $\frac 12$ .

5 We may also proceed with regularization via mollification.

6 In the complex-valued setting (with even k), we use the Laguerre polynomial $c_k L_{\frac k2} (|u_N|^2; \sigma _N)$ to define the Wick renormalization. See [Reference Oh and Thomann47].

7 The claimed almost sure convergence follows form the $L^p(\Omega )$ -convergence in [Reference Oh and Thomann47, Proposition 1.1] together with the Borel–Cantelli lemma.

8 One may also prove the uniform exponential integrability bound (1.10) via the variational approach as in [Reference Barashkov and Gubinelli3], using the Boué–Dupuis variational formula (Lemma 3.1). When k is large, however, the combinatorial complexity for the variational approach may be cumbersome, while there is no such combinatorial issue in the approach of [Reference Da Prato and Tubaro21, Reference Oh and Thomann47].

9 Once again, we do not worry about renormalizations in this formal discussion.

10 For (1.18), we need to add $\frac 12 \int _{{\mathbb {T}}^d} (\partial _t u)^2 dx$ to the energy functional $E(u)$ in (1.16).

11 For (1.19), the coefficient of the potential energy in (1.16) is slightly different. Thanks to the conservation of the spatial mean $\int _{{\mathbb {T}}} u dx$ under the generalized Benjamin–Ono (1.19), we can work on the mean-zero functions. In this case, we consider the Gibbs measure associated with the massless log-correlated Gaussian field by replacing $(1-\partial _x^2)^{\frac {1}{4}}$ in (1.16) with $(-\partial _x^2)^{\frac {1}{4}}$ .

12 The choice of the exponent $\gamma =2$ in $A\big (\int _{{\mathbb {T}}^2} :u^2: dx\big )^{\gamma }$ (with $A\gg 1$ ) is optimal. See Remark 4.2

13 For the NLW dynamics, we need to couple $\rho $ on the u-component with the white noise measure $\mu _0$ on the $\partial _t u$ -component (which is independent from $\rho $ ). More precisely, the Gibbs measure is of the form $\vec {\rho }=\rho \otimes \mu _0$ , where the $\Phi ^3_2$ -measure $\rho $ in (1.29) is on the u-component and the white noise measure $\mu _0$ is on the $\partial _t u$ -component.

14 See also a recent preprint [Reference Liang and Wang36], where the authors covered the range $\alpha> \frac 12$ .

15 We use the convention that the symbol $\lesssim $ indicates that inessential constants are suppressed in the inequality.

16 For simplicity, we write the definition of the Ornstein–Uhlenbeck operator L when $B = {\mathbb {R}}^d$ .

17 In particular, (2.16) is false when $N = 0$ .

18 By convention, we normalize $B_n$ such that $\text {Var}(B_n(t)) = t$ . In particular, $B_0$ is a standard real-valued Brownian motion.

19 Namely, the map $(t, \omega ) \in [0, 1] \times \Omega \mapsto \theta (t, \omega ) \in L^2({\mathbb {T}}^d)$ is $\mathcal B_{[0, t]}\otimes \mathcal {F}_t$ -measurable, where $\mathcal B_{[0, t]}$ denotes the Borel sets in $[0, t]$ and $\{\mathcal {F}_t\}_{0 \le t \le 1}$ denotes the filtration induced by the process Y.

20 See, for example, [Reference Oh and Thomann47, Proposition 1.1] together with the Borel–Cantelli lemma.

21 While we do not make use of solitons in an explicit manner in this paper, one should think of this perturbation as something like a soliton or a finite blowup solution (at a fixed time) with a highly concentrated profile whose $L^4$ -norm blows up while its $L^2$ -norm remains bounded. See Lemma 3.3.

22 Here, we are referring to the independence modulo the condition $\overline {B_n} = B_{-n}$ , $n \in \mathbb {Z}^d$ . Similar comments apply in the following.

23 In a recent work [Reference Seong58], the second author studied the construction of the Gibbs measure for the Zakharov–Yukawa system on ${\mathbb {T}}^2$ (i.e., $\Delta $ in (A.1) is replaced by $-(-\Delta )^{\gamma }$ , $\gamma <1$ ) and showed that the renormalized Gibbs measure is indeed normalizable when $\gamma < 1$ . See [Reference Seong58] for details.

24 In particular, $g_0$ is a standard real-valued Gaussian random variables where $\operatorname *{\mathrm {Re}} g_n$ and $\operatorname *{\mathrm {Im}} g_n$ , $n \in \Lambda $ , are independent real-valued Gaussian random variables with mean 0 and variance $\frac 12$ .

25 We bound the second term on the right-hand side of (B.5) by (B.6).

References

Albeverio, S. and Cruzeiro, A., ‘Global flows with invariant (Gibbs) measures for Euler and Navier-Stokes two dimensional fluids’, Comm. Math. Phys. 129 (1990) 431444.CrossRefGoogle Scholar
Aronszajn, N. and Smith, K., ‘Theory of Bessel potentials. I’, Ann. Inst. Fourier (Grenoble) 11 (1961), 385475.CrossRefGoogle Scholar
Barashkov, N. and Gubinelli, M., ‘A variational method for ${\varPhi}_3^{4}$ ’, Duke Math. J. 169(17) (2020), 33393415.CrossRefGoogle Scholar
Bényi, Á. and Oh, T., ‘The Sobolev inequality on the torus revisited’, Publ. Math. Debrecen 83(3) (2013), 359374.CrossRefGoogle Scholar
Bényi, Á., Oh, T. and Zhao, T., ‘Fractional Leibniz rule on the torus’, Preprint, 2023, arXiv:2311.07998 [math.CA].Google Scholar
Bogachev, V., Gaussian Measures, Mathematical Surveys and Monographs, vol. 62 (American Mathematical Society, Providence, RI, 1998), xii+433.CrossRefGoogle Scholar
Boué, M. and Dupuis, P., ‘A variational representation for certain functionals of Brownian motion’, Ann. Probab. 26(4) (1998), 16411659.CrossRefGoogle Scholar
Bourgain, J., ‘Periodic nonlinear Schrödinger equation and invariant measures’, Comm. Math. Phys. 166(1) (1994), 126.CrossRefGoogle Scholar
Bourgain, J., ‘On the Cauchy and invariant measure problem for the periodic Zakharov system’, Duke Math. J. 76(1) (1994), 175202.CrossRefGoogle Scholar
Bourgain, J., ‘Nonlinear Schrödinger equations’, Hyperbolic Equations and Frequency Interactions (Park City, UT, 1995), IAS/Park City Math. Ser., 5 (Amer. Math. Soc., Providence, RI, 1999), 3157.Google Scholar
Bourgain, J., ‘Invariant measures for the 2D-defocusing nonlinear Schrödinger equation’, Comm. Math. Phys. 176(2) (1996), 421445.CrossRefGoogle Scholar
Bourgain, J. and Bulut, A., ‘Almost sure global well posedness for the radial nonlinear Schrödinger equation on the unit ball I: The 2D case’, Ann. Inst. H. Poincaré Anal. Non Linéaire 31(6) (2014), 12671288.CrossRefGoogle Scholar
Brydges, D. and Slade, G., ‘Statistical mechanics of the 2-dimensional focusing nonlinear Schrödinger equation’, Comm. Math. Phys. 182(2) (1996), 485504.CrossRefGoogle Scholar
Burq, N., Thomann, L. and Tzvetkov, N., ‘Remarks on the Gibbs measures for nonlinear dispersive equations’, Ann. Fac. Sci. Toulouse Math. (6) 27(3) (2018), 527597.CrossRefGoogle Scholar
Chapouto, A., Forlano, J., Li, G., Oh, T. and Pilod, D., ‘Low regularity a priori bounds for the intermediate long wave equation’, Proc. Amer. Math. Soc. (to appear).Google Scholar
Chapouto, A., Li, G., Oh, T. and Pilod, D., ‘Deep-water limit of the intermediate long wave equation in ${L}^2$ ’, Preprint, 2023, arXiv:2311.07997 [math.AP].Google Scholar
Chapouto, A., Li, G. and Oh, T., In preparation.Google Scholar
Cher, Y., Czubak, M. and Sulem, C., ‘Blowing up solutions to the Zakharov system for Langmuir waves’, in Laser Filamentation, CRM Ser. Math. Phys., (Springer, Cham, 2016), 7795.CrossRefGoogle Scholar
Da Prato, G. and Debussche, A., ‘Two-dimensional Navier–Stokes equations driven by a space-time white noise’, J. Funct. Anal. 196(1) (2002), 180210.CrossRefGoogle Scholar
Da Prato, G. and Debussche, A., ‘Strong solutions to the stochastic quantization equations’, Ann. Probab. 31(4) (2003), 19001916.CrossRefGoogle Scholar
Da Prato, G. and Tubaro, L., ‘Wick powers in stochastic PDEs: an introduction’, Technical report UTM, 2006, 39 pp.Google Scholar
Deng, Y., ‘Invariance of the Gibbs measure for the Benjamin–Ono equation’, J. Eur. Math. Soc. 17(5) (2015), 11071198.CrossRefGoogle Scholar
Deng, Y., Nahmod, A. and Yue, H., ‘Invariant Gibbs measures and global strong solutions for nonlinear Schrödinger equations in dimension two’, Ann. Math. (to appear).Google Scholar
Durrett, R., Probability—Theory and Examples, Fifth edition. Cambridge Series in Statistical and Probabilistic Mathematics, vol. 49 (Cambridge University Press, Cambridge, 2019), xii+419.CrossRefGoogle Scholar
Friedlander, L., ‘An invariant measure for the equation ${u}_{tt}-{u}_{xx}+{u}^3=0$ ’, Comm. Math. Phys. 98(1) (1985), 116.CrossRefGoogle Scholar
Glimm, J. and Jaffe, A., Physics, Quantum. A Functional Integral Point of View, second edn. (Springer-Verlag, New York, 1987), xxii+535.Google Scholar
Grafakos, L., Classical Fourier Analysis, third edn., Graduate Texts in Mathematics, vol. 249 (Springer, New York, 2014), xviii+638.CrossRefGoogle Scholar
Grafakos, L., Modern Fourier Analysis , third edn., Graduate Texts in Mathematics, vol. 250 (Springer, New York, 2014), xvi+624.Google Scholar
Gubinelli, M., Koch, H. and Oh, T., ‘Renormalization of the two-dimensional stochastic nonlinear wave equations’, Trans. Amer. Math. Soc. 370(10) (2018), 73357359.CrossRefGoogle Scholar
Gubinelli, M., Koch, H., Oh, T. and Tolomeo, L., ‘Global dynamics for the two-dimensional stochastic nonlinear wave equations’, Int. Math. Res. Not. (21) (2022), 1695416999.CrossRefGoogle Scholar
Gunaratnam, T. S., Oh, T., Tzvetkov, N. and Weber, H., ‘Quasi-invariant Gaussian measures for the nonlinear wave equation in three dimensions’, Probab. Math. Phys. 3(2) (2022), 343379.CrossRefGoogle Scholar
Kuo, H., Introduction to Stochastic Integration, Universitext (Springer, New York, 2006), xiv+278.Google Scholar
Lebowitz, J., Rose, H. and Speer, E., ‘Statistical mechanics of the nonlinear Schrödinger equation’, J. Statist. Phys. 50(3–4) (1988), 657687.CrossRefGoogle Scholar
Li, G., ‘Deep-water and shallow-water limits of the intermediate long wave equation’, Preprint, 2022, arXiv:2207.12088 [math.AP].Google Scholar
Li, G., Oh, T. and Zheng, G., ‘On the deep-water and shallow-water limits of the intermediate long wave equation from a statistical viewpoint’, Preprint, 2022, arXiv:2211.03243 [math.AP].Google Scholar
Liang, R. and Wang, Y., ‘Gibbs dynamics for the weakly dispersive nonlinear Schrödinger equations’, Preprint, 2023, arXiv:2306.07645 [math.AP].Google Scholar
Masmoudi, N. and Nakanishi, K., ‘Energy convergence for singular limits of Zakharov type systems’, Invent. Math. 172(3) (2008), 535583.CrossRefGoogle Scholar
McKean, H.P., Statistical mechanics of nonlinear wave equations. IV. Cubic Schrödinger, Comm. Math. Phys. 168 (1995), no. 3, 479491. Erratum: Statistical mechanics of nonlinear wave equations. IV. Cubic Schrödinger, Comm. Math. Phys. 173 (1995), no. 3, 675.Google Scholar
Nelson, E., A Quartic Interaction in Two Dimensions, 1966 Mathematical Theory of Elementary Particles (Proc. Conf., Dedham, Mass., 1965) (MIT Press, Cambridge, MA, 1966), 6973.Google Scholar
Nualart, D., The Malliavin Calculus and Related Topics, second edn., Probability and Its Applications (New York) (Springer-Verlag, Berlin, 2006), xiv+382.Google Scholar
Oh, T., Okamoto, M. and Tolomeo, L., ‘Focusing ${\varPhi}_3^4$ -model with a Hartree-type nonlinearity’, Mem. Amer. Math. Soc. (to appear).Google Scholar
Oh, T., Okamoto, M. and Tolomeo, L., ‘Stochastic quantization of the ${\varPhi}_3^3$ -model’, Mem. Eur. Math. Soc. (to appear).Google Scholar
Oh, T., Richards, G. and Thomann, L., ‘On invariant Gibbs measures for the generalized KdV equations’, Dyn. Partial Differ. Equ. 13(2) (2016), 133153.CrossRefGoogle Scholar
Oh, T., Robert, T., Sosoe, P. and Wang, Y., ‘On the two-dimensional hyperbolic stochastic sine-Gordon equation’, Stoch. Partial Differ. Equ. Anal. Comput. 9 (2021), 132.Google Scholar
Oh, T., Robert, T., Sosoe, P. and Wang, Y., ‘Invariant Gibbs dynamics for the dynamical sine-Gordon model’, Proc. Roy. Soc. Edinburgh Sect. A 151(5) (2021), 14501466.CrossRefGoogle Scholar
Oh, T., Sosoe, P. and Tolomeo, L., ‘Optimal integrability threshold for Gibbs measures associated with focusing NLS on the torus’, Invent. Math. 227(3) (2022), 13231429.CrossRefGoogle Scholar
Oh, T. and Thomann, L., A’ pedestrian approach to the invariant Gibbs measure for the 2-d defocusing nonlinear Schrödinger equations’, Stoch. Partial Differ. Equ. Anal. Comput. 6 (2018), 397445.Google Scholar
Oh, T. and Thomann, L., ‘Invariant Gibbs measure for the 2- $\mathrm{d}$ defocusing nonlinear wave equations’, Ann. Fac. Sci. Toulouse Math. 29(1) (2020), 126.CrossRefGoogle Scholar
Oh, T. and Tzvetkov, N., ‘Quasi-invariant Gaussian measures for the two-dimensional defocusing cubic nonlinear wave equation’, J. Eur. Math. Soc. 22(6) (2020), 17851826.CrossRefGoogle Scholar
Oh, T. and Wang, Y., ‘On the ill-posedness of the cubic nonlinear Schrödinger equation on the circle’, An. Ştiinţ. Univ. Al. I. Cuza Iaşi. Mat. (N.S.) 64(1) (2018), 5384.Google Scholar
Ozawa, T. and Tsutsumi, Y., ‘The nonlinear Schrödinger limit and the initial layer of the Zakharov equations’, Differential Integral Equations 5(4) (1992), 721745.CrossRefGoogle Scholar
Parisi, G. and Wu, Y. S., ‘Perturbation theory without gauge fixing’, Sci. Sinica 24(4) (1981), 483496.Google Scholar
Rider, B., ‘On the $\infty$ -volume limit of the focusing cubic Schrödinger equation’, Comm. Pure Appl. Math. 55(10) (2002), 12311248.CrossRefGoogle Scholar
Robert, T., Seong, K., Tolomeo, L. and Wang, Y., ‘Focusing Gibbs measures with harmonic potential’, Ann. Inst. Henri Poincaré Probab. Stat. (to appear).Google Scholar
Röckner, M., Yang, H. and Zhu, R., ‘Conservative stochastic 2-dimensional Cahn–Hilliard equation’, Ann. Appl. Probab. 31(3) (2021), 13361375.CrossRefGoogle Scholar
Röckner, M., Zhu, R. and Zhu, X., ‘Ergodicity for the stochastic quantization problems on the 2D-torus’, Comm. Math. Phys. 352 (2017) 10611090.CrossRefGoogle Scholar
Ryang, S., Saito, T. and Shigemoto, K., ‘Canonical stochastic quantization’, Progr. Theoret. Phys. 73(5) (1985), 12951298.CrossRefGoogle Scholar
Seong, K., ‘Invariant Gibbs dynamics for the two-dimensional Zakharov–Yukawa system’, J. Funct. Anal. 286(4) (2024), 81. Paper No. 110244.Google Scholar
Shigekawa, I., ‘Stochastic analysis’, in Translations of Mathematical Monographs, Iwanami Series in Modern Mathematics, vol. 224 (American Mathematical Society, Providence, RI, 2004), xii+182. Translated from the 1998 Japanese original by the author.Google Scholar
Simon, B., The $P{\left(\varphi \right)}_2$ Euclidean (Quantum) Field Theory, Princeton Series in Physics (Princeton University Press, Princeton, NJ, 1974), xx+392.Google Scholar
Sun, C. and Tzvetkov, N., ‘Gibbs measure dynamics for the fractional NLS’, SIAM J. Math. Anal. 52 (2020) 46384704.CrossRefGoogle Scholar
Sun, C. and Tzvetkov, N., ‘Refined probabilistic global well-posedness for the weakly dispersive NLS’, Nonlinear Anal. 213 (2021), Paper No. 112530.CrossRefGoogle Scholar
Tolomeo, L., ‘Ergodicity for the hyperbolic $P(\Phi)_2$ -model’, Preprint, 2023, arXiv:2310.02190 [math.PR].Google Scholar
Tolomeo, L. and Weber, H., ‘Phase transition for invariant measures of the focusing Schrödinger equation’, Preprint, 2023, arXiv:2306.07697 [math.AP].Google Scholar
Tsatsoulis, P. and Weber, H., ‘Spectral gap for the stochastic quantization equation on the 2-dimensional torus’, Ann. Inst. Henri Poincaré Probab. Stat. 54(3) (2018), 12041249.CrossRefGoogle Scholar
Tzvetkov, N., ‘Invariant measures for the defocusing nonlinear Schrödinger equation’, Ann. Inst. Fourier (Grenoble) 58(7) (2008), 25432604.CrossRefGoogle Scholar
Tzvetkov, N., ‘Construction of a Gibbs measure associated to the periodic Benjamin-Ono equation’, Probab. Theory Related Fields 146(3–4) (2010), 481514.CrossRefGoogle Scholar
Üstünel, A., ‘Variational calculation of Laplace transforms via entropy on Wiener space and applications’, J. Funct. Anal. 267(8) (2014), 30583083.CrossRefGoogle Scholar