Hostname: page-component-78c5997874-94fs2 Total loading time: 0 Render date: 2024-11-10T09:14:45.618Z Has data issue: false hasContentIssue false

Duality theory for exponential utility-based hedging in the Almgren–Chriss model

Published online by Cambridge University Press:  03 August 2023

Yan Dolinsky*
Affiliation:
Hebrew University
*
*Postal address: Department of Statistics, Hebrew University, Jerusalem, Israel. Email address: yan.dolinsky@mail.huji.ac.il
Rights & Permissions [Opens in a new window]

Abstract

In this paper we obtain a duality result for the exponential utility maximization problem where trading is subject to quadratic transaction costs and the investor is required to liquidate her position at the maturity date. As an application of the duality, we treat utility-based hedging in the Bachelier model. For European contingent claims with a quadratic payoff, we compute the optimal trading strategy explicitly.

Type
Original Article
Copyright
© The Author(s), 2023. Published by Cambridge University Press on behalf of Applied Probability Trust

1. Introduction

In financial markets, trading moves prices against the trader: buying faster increases execution prices, and selling faster decreases them. This aspect of liquidity is known as market depth [Reference Black5] or price impact. In this paper we consider the problem of optimal liquidation for the exponential utility function in the Almgren–Chriss model [Reference Almgren and Chriss1] with linear temporary impact for the underlying asset.

This problem goes back to Schied et al. [Reference Schied, Schöneborn and Tehranchi15], who considered a market model given by a Lévy process. They proved that the optimal trading strategy is deterministic and hence reduced the primal problem to a deterministic variational problem that can be solved explicitly. A similar phenomenon occurs in [Reference Bank and Voß2], where Bank and Voß consider an optimal liquidation problem with transient price impact in the Bachelier model. Namely, the fact that the utility function is exponential and the risky asset has independent increments allows us to reduce the primal hedging problem to a deterministic control problem.

For the case where the market model is not given by a process with independent increments, the exponential utility maximization problem in the Almgren–Chriss model is much more complicated and typically does not have an explicit solution. Gatheral and Schied [Reference Gatheral and Schied12] found a closed-form solution for the optimal trade execution strategy in the Almgren–Chriss framework assuming that the risky asset is given by the Black–Scholes model. However, the risk criterion they used was given by the expected value of the terminal wealth, and hence it is analytically simpler than the exponential utility maximization problem. In general, although the current paper is focused on the Almgren–Chriss model, there are other models for optimal liquidation problems. For instance, one common approach is via limit order books (see [Reference Bayrakatar and Ludkovski4], [Reference Fruth, Schöneborn and Urusov11], and the references therein).

Our first result is Theorem 2.1, which provides a dual representation for the optimal portfolio and the corresponding value of the exponential utility maximization problem. Our duality result is obtained under quite general assumptions on the market model. As usual, for the case of exponential utility, by applying a change of measure one can reduce the problem of utility-based hedging of a European contingent claim to the standard utility maximization problem. This brings us to our second result.

Our second result (Theorem 3.1) deals with explicit computations for the case where the risky asset is given by a linear Brownian motion, i.e. the Bachelier model. We consider a European contingent claim with the payoff given by $\kappa S^2_T$ , where $\kappa>0$ is a constant and $S_T$ is the stock price at the maturity date. We apply the Girsanov theorem and the Itô isometry in order to derive a particularly convenient representation of the dual target functional which leads to deterministic variational problems. These problems can be solved explicitly and allow us both to construct the solution to the dual problem and to compute the primal optimal strategy. We show that the optimal strategy is given by a feedback form which we compute explicitly. For the case $\kappa=0$ , i.e. there is no option, Theorem 3.1 recovers the optimal portfolio found in [Reference Schied, Schöneborn and Tehranchi15] for the Bachelier model.

The problem of utility-based hedging for the Almgren–Chriss model in the Bachelier setup was studied recently by Ekren and Nadtochiy [Reference Ekren and Nadtochiy9]: they apply the Hamilton–Jacobi–Bellman (HJB) methodology and obtain a representation of the value function and the optimal strategy. Still, they do not require the liquidation of the portfolio at the maturity date. Moreover, they assume that the payoff function is globally Lipschitz.

A natural question that for now remains open is whether Theorem 2.1 can be applied beyond the Bachelier model. In particular, it is not clear whether by applying this duality result one can recover the optimal portfolio from [Reference Schied, Schöneborn and Tehranchi15] for a general Lévy process (beyond Brownian motion).

The rest of the paper is organized as follows. In Section 2 we introduce the model and formulate a general duality result (Theorem 2.1). In Section 3 we consider the Bachelier model and we explicitly solve the problem of utility-based hedging for European contingent claims with a quadratic payoff (Theorem 3.1). In Section 4 we derive an auxiliary result from the field of deterministic variational analysis.

2. Preliminaries and the duality result

Let $(\Omega,\mathcal{F},(\mathcal{F}_t)_{t\in [0,T]},\mathbb{P})$ be a filtered probability space equipped with the completed and right-continuous filtration $(\mathcal{F}_t)_{t\in [0,T]}$ , and without loss of generality we assume that $\mathcal{F}=\mathcal{F}_T$ . We do not make any assumptions on $\mathcal{F}_0$ . Consider a simple financial market with a riskless savings account bearing zero interest (for simplicity) and with an RCLL (right-continuous with left limits) risky asset $S=(S_t)_{t\in [0,T]}$ which is adapted to the filtration $(\mathcal{F}_t)_{t\in [0,T]}$ . We assume the following growth condition.

Assumption 2.1. There exists $a>0$ such that $\mathbb{E}_{\mathbb{P}}\bigl[\exp\bigl(a\sup_{0 \leq t\leq T} S^2_t\bigr)\bigr]<\infty.$

Following [Reference Almgren and Chriss1], we model the investor’s market impact in a temporary linear form, and thus, when at time t the investor turns over her position $\Phi_t$ at the rate $\phi_t=\dot{\Phi}_t$ , the execution price is $S_t+({{\Lambda}/{2}})\phi_t$ for some constant $\Lambda>0$ . In our setup the investor has to liquidate her position, namely $\Phi_T=\Phi_0+\int_{0}^T\phi_t \,{\textrm{d}} t=0$ .

As a result, the profits and losses from trading are given by

(2.1) \begin{equation}V^{\Phi_0,\phi}_T\,:\!=\, -\Phi_0 S_0-\int_{0}^T \phi_t S_t \,{\textrm{d}} t-\dfrac{\Lambda}{2}\int_{0}^T \phi^2_t \,{\textrm{d}} t,\end{equation}

where $\Phi_0$ is the initial number (deterministic) of shares. Observe that all the above integrals are defined pathwise. In particular, we do not assume that S is a semi-martingale.

Remark 2.1. Let us explain formula (2.1) in more detail. At time 0 the investor has $\Phi_0$ stocks and the sum $-\Phi_0 S_0$ on her savings account. At time $t\in [0,T)$ the investor buys $\phi_t \,{\textrm{d}} t$ , an infinitesimal number of stocks, or more intuitively sells $-\phi_t \,{\textrm{d}} t$ shares, so the (infinitesimal) change in the savings account is given by $-\phi_t (S_t+({{\Lambda}/{2}})\phi_t)\,{\textrm{d}} t$ . Since we liquidate the portfolio at the maturity date, the terminal portfolio value is equal to the terminal amount on the savings account and given by

$$-\Phi_0 S_0- \int_{0}^T \phi_t \biggl(S_t+\dfrac{\Lambda}{2}\phi_t\biggr)\,{\textrm{d}} t.$$

We arrive at the right-hand side of (2.1). For the case where S is a semi-martingale, by applying the integration by parts formula we get that the right-hand side of (2.1) is equal to

$$\int_{0}^T \Phi_t \,{\textrm{d}} S_t-\dfrac{\Lambda}{2} \int_{0}^T \phi^2_t \,{\textrm{d}} t.$$

For a given $\Phi_0$ , the natural class of admissible strategies is

$$\mathcal{A}_{\Phi_0}\,:\!=\, \biggl\{\phi \,:\, \text{$\phi$ is $ (\mathcal{F}_t)_{t\in [0,T]}$-optional with} \ \int_{0}^T \phi^2_t \,{\textrm{d}} t<\infty \ \text{and} \ \Phi_0+\int_{0}^T \phi_t \,{\textrm{d}} t=0 \biggr\}.$$

As usual, all the equalities and the inequalities are understood in the almost sure sense.

The investor’s preferences are described by an exponential utility function $u(x)=-\exp\!({-}\alpha x)$ , $x\in\mathbb{R}$ , with constant absolute risk aversion parameter $\alpha>0$ , and for a given $\Phi_0$ her goal is to

(2.2) \begin{equation}\text{maximize} \ \mathbb{E}_{\mathbb{P}}\bigl[{-}\exp\bigl({-}\alpha V^{\Phi_0,\phi}_T\bigr) \bigr] \ \text{over} \ \phi\in\mathcal{A}_{\Phi_0}.\end{equation}

Next we introduce some notation. Let $\mathcal{Q}$ denote the set of all equivalent probability measures $\mathbb{Q}\sim\mathbb{P}$ with finite entropy

$$\mathbb{E}_{\mathbb{Q}}\biggl[\!\log\biggl(\dfrac{{\textrm{d}}\mathbb{Q}}{{\textrm{d}}\mathbb{P}}\biggr)\biggr]<\infty$$

relative to $\mathbb{P}$ . For any $\mathbb{Q}\in\mathcal{Q}$ , let $\mathcal{M}^{\mathbb{Q}}_{[0,T]}$ be the set of all square-integrable $\mathbb{Q}$ -martingales $M=(M_t)_{0\leq t\leq T}$ . Moreover, let $\mathcal{M}^{\mathbb{Q}}_{[0,T)}$ be the set of all $\mathbb{Q}$ -martingales $M=(M_t)_{0\leq t<T}$ that are defined on the half-open interval [0, T) and satisfy

$$\|M\|_{L^2({\textrm{d}} t\otimes\mathbb{Q})}\,:\!=\, \mathbb{E}_{\mathbb{Q}}\biggl[\int_{0}^T M^2_t \,{\textrm{d}} t\biggr]<\infty.$$

We arrive at the duality result.

Theorem 2.1. Let Assumption 2.1 be in force. Then, for any $\Phi_0\in\mathbb{R}$ ,

(2.3) \begin{align}&\max_{\phi\in\mathcal{A}_{\Phi_0}}\biggl\{-\dfrac{1}{\alpha}\log\mathbb{E}_{\mathbb{P}}\bigl[\exp\bigl({-}\alpha V^{\Phi_0,\phi}_T\bigr) \bigr]\biggr\}\notag \\&\quad =\inf_{\mathbb{Q}\in\mathcal{Q}}\inf_{M\in\mathcal{M}^{\mathbb{Q}}_{[0,T)}}\biggl\{\mathbb{E}_{\mathbb{Q}}\biggl[\dfrac{1}{\alpha}\log\biggl(\dfrac{{\textrm{d}}\mathbb{Q}}{{\textrm{d}}\mathbb{P}}\biggr)+\Phi_0(M_0-S_0)+\dfrac{1}{2\Lambda}\int_{0}^T |M_t-S_t|^2 \,{\textrm{d}} t\biggr]\biggr\}.\end{align}

Furthermore, there is a unique minimizer $\bigl(\hat{\mathbb{Q}},\hat M\in \mathcal{M}^{\hat{\mathbb{Q}}}_{[0,T)}\bigr)$ for the dual problem (right-hand side of (2.3)) and the process given by

(2.4) \begin{equation}\hat\phi_t\,:\!=\, \dfrac{\hat M_t-S_t}{\Lambda}, \quad t\in [0,T)\end{equation}

is the unique optimal portfolio ( ${\textrm{d}} t\otimes\mathbb{P}$ a.s.) for the primal problem (2.2).

Remark 2.2. Note that it is sufficient to define the optimal portfolio on the half-open interval [0, T). We can just set $\phi_T\,:\!=\, 0$ .

Remark 2.3. Theorem 2.1 can be viewed as an extension of Proposition A.2 in [Reference Bank, Dolinsky and Rásonyi3] for the case where the investor liquidates her portfolio at the maturity date. The liquidation requirement adds additional difficulty to the dual representation. In particular, the maximization in the dual representation is over all equivalent probability measures and the corresponding martingales, in contrast to Proposition A.2 in [Reference Bank, Dolinsky and Rásonyi3] where the dual objects are just equivalent probability measures.

The duality result in [Reference Bank, Dolinsky and Rásonyi3] was used to solve the problem of exponential utility maximization in the Bachelier setting for the case where the investor can peek some time units into the future (frontrunner). Theorem 2.1 allows us to solve the same problem with the additional requirement that the portfolio has to be liquidated at the maturity date. Since the corresponding computations are not straightforward, we leave this problem for future research.

In the proof of the duality we assume that $\Lambda>0$ . However, if we formally take $\Lambda=0$ in the right-hand side of (2.3) and use the convention ${{0}/{0}}\,:\!=\, 0$ , we get the relation

$$\max_{\phi}\bigl\{-\log\mathbb{E}_{\mathbb{P}}\bigl[\exp\bigl({-}\alpha V^{\Phi_0,\phi}_T\bigr) \bigr]\bigr\}=\inf_{\mathbb{Q}}\mathbb{E}_{\mathbb{Q}}\biggl[\!\log\biggl(\dfrac{{\textrm{d}}\mathbb{Q}}{{\textrm{d}}\mathbb{P}}\biggr)\biggr],$$

where the infimum is taken over all martingale measures. This is (roughly speaking) the classical duality result for exponential hedging in the frictionless setup (see [Reference Delbaen, Grandits, Rheinländer, Samperi, Schweizer and Stricker7], [Reference Fritelli10]). Of course, in the frictionless setup there is no meaning to the initial number of shares $\Phi_0$ and there is no real restriction in the requirement $\Phi_T=0$ .

We will prove Theorem 2.1 at the end of this section, after suitable preparations. We start by proving the superhedging theorem.

Lemma 2.1. Let X be a random variable. Assume that there exists $\alpha>0$ for which

(2.5) \begin{equation}\mathbb{E}_{\mathbb{P}}[\!\exp\!(\alpha \max({-}X,0))]<\infty.\end{equation}

There exists $\phi\in\mathcal{A}_{\Phi_0}$ such that $V^{\Phi_0,\phi}_T\geq X$ if and only if

(2.6) \begin{equation}\sup_{\mathbb{Q}\in\mathcal{Q}}\sup_{M\in\mathcal{M}^{\mathbb{Q}}_{[0,T]}}\mathbb{E}_{\mathbb{Q}}\biggl[X-\Phi_0(M_0-S_0)-\dfrac{1}{2\Lambda}\int_{0}^T |M_t-S_t|^2 \,{\textrm{d}} t\biggr]\leq 0.\end{equation}

Proof. We start with the ‘only if’ part of the claim. Let $\phi\in\mathcal{A}_{\Phi_0}$ such that $V^{\Phi_0,\phi}_T\geq X$ . Choose $\mathbb{Q}\in \mathcal{Q}$ and $M\in\mathcal{M}^{\mathbb{Q}}_{[0,T]}$ . From (2.1) and the Cauchy–Schwarz inequality, it follows that

$$\sqrt{\int_{0}^T S^2_t \,{\textrm{d}} t} \sqrt{\int_{0}^T \phi^2_t \,{\textrm{d}} t}-\dfrac{\Lambda}{2}\int_{0}^T \phi^2_t \,{\textrm{d}} t\geq X+\Phi_0S_0,$$

and hence, by exploiting the behaviour of the (random) parabola

$$x\rightarrow x \sqrt{\int_{0}^T S^2_t \,{\textrm{d}} t} -\dfrac{\Lambda}{2} x^2,$$

we get

$$\int_{0}^T \phi^2_t \,{\textrm{d}} t\leq c\biggl(1+\max({-}X,0)+\int_{0}^T S^2_t \,{\textrm{d}} t\biggr)$$

for some constant $c>0$ . This, together with Assumption 2.1, (2.5), and the well-known inequality ${\textrm{e}}^x+y\log y\geq xy$ , $x\in\mathbb{R}$ , $y>0$ , yields

$$\mathbb{E}_{\mathbb{Q}}\biggl[\int_{0}^T \phi^2_t \,{\textrm{d}} t \biggr]<\infty.$$

Hence

$$\mathbb{E}_{\mathbb{Q}}\biggl[\Phi_0M_0+\int_{0}^T M_t\phi_t \,{\textrm{d}} t\biggr]=0,$$

so from (2.1) and the simple inequality

$$x y-\dfrac{\Lambda}{2}x^2\leq \dfrac{y^2}{2\Lambda},\quad x,y\in\mathbb{R}$$

we obtain

\begin{align*}\mathbb{E}_{\mathbb{Q}}[X]&\leq\mathbb{E}_{\mathbb{Q}}\biggl[\Phi_0 (M_0-S_0)+\int_{0}^T \phi_t (M_t-S_t) \,{\textrm{d}} t- \dfrac{\Lambda}{2}\int_{0}^T \phi^2_t \,{\textrm{d}} t\biggr]\\&\leq \mathbb{E}_{\mathbb{Q}}\biggl[\Phi_0 (M_0-S_0)+\dfrac{1}{2\Lambda}\int_{0}^T |M_t-S_t|^2 \,{\textrm{d}} t\biggr],\end{align*}

and the result follows.

Next, we prove the ‘if’ part of the claim. Assume by contradiction that this part does not hold true. Namely, there exists X which satisfies (2.5)–(2.6) and there is no $\phi\in\mathcal{A}_{\Phi_0}$ such that $V^{\Phi_0,\phi}_T\geq X$ .

Using the same arguments as in the proof of Proposition 3.5 in [Reference Guasoni and Rásonyi14], it follows that the set

$$\Upsilon\,:\!=\, \bigl(\bigl\{V^{\Phi_0,\phi}_T\,:\, \phi\in\mathcal{A}_{\Phi_0}\bigr\}-L^0_{+}(\mathbb{P})\bigr)\cap L^1(\mathbb{P})$$

is convex and closed in $L^1(\mathbb{P})$ . Observe that from Assumption 2.1 and (2.5)–(2.6) (take $\mathbb{Q}=\mathbb{P}$ and $M\equiv 0$ in (2.6)) it follows that $X\in L^1(\mathbb{P})$ . Since there is no $\phi\in\mathcal{A}_{\Phi_0}$ such that $V^{\Phi_0,\phi}_T\geq X$ , we get $X\in L^1(\mathbb{P})\setminus\Upsilon$ .

Thus, by the Hahn–Banach separation theorem, we can find $Z\in L^{\infty}\setminus\{0\}$ such that

$$\mathbb{E}_{\mathbb{P}}[Z X]>\sup_{\upsilon\in \Upsilon}\mathbb{E}_{\mathbb{P}}[Z \upsilon].$$

Since

$$\bigl(V^{\Phi_0,\hat\phi}_T-L^0_{+}(\mathbb{P})\bigr)\cap L^1(\mathbb{P})\subset\Upsilon\quad \text{for } \hat\phi\equiv -\dfrac{\Phi_0}{T},$$

we must have $Z\geq 0$ . Moreover, from (2.1) we have

$$V^{\Phi_0,\phi}_T\leq -\Phi_0S_0+\dfrac{1}{2\Lambda}\int_{0}^T S^2_t \,{\textrm{d}} t\quad \text{for all $\phi$,}$$

so from Assumption 2.1 it follows that there exists $\epsilon>0$ such that

$$\mathbb{E}_{\mathbb{P}}[(\epsilon+Z) X]>\sup_{\upsilon\in \Upsilon}\mathbb{E}_{\mathbb{P}}[(\epsilon+Z) \upsilon].$$

We conclude that for the probability measure $\mathbb{Q}$ given by

$$\dfrac{{\textrm{d}}\mathbb{Q}}{{\textrm{d}}\mathbb{P}}\,:\!=\, \dfrac{\epsilon+ Z}{\epsilon +\mathbb{E}_{\mathbb{P}}[Z]}$$

we have $\mathbb{Q}\in \mathcal{Q}$ and

(2.7) \begin{equation}\mathbb{E}_{\mathbb{Q}}[X]>\sup_{\phi\in\mathcal{A}_{\Phi_0}}\mathbb{E}_{\mathbb{Q}}\bigl[V^{\Phi_0,\phi}_T\bigr],\end{equation}

where we set

$$\mathbb{E}_{\mathbb{Q}}\bigl[V^{\Phi_0,\phi}_T\bigr]\,:\!=\, -\infty$$

if $V^{\Phi_0,\phi}_T\notin L^1(\mathbb{Q})$ .

Next, fix $n\in\mathbb{N}$ and introduce the set

$$\mathcal{B}_n\,:\!=\, \bigl\{\phi\in L^2({\textrm{d}} t\otimes\mathbb{Q})\,:\, \|\phi\|_{L^2({\textrm{d}} t\otimes\mathbb{Q})}\leq n\bigr\}.$$

We argue that for any $n\in\mathbb{N}$

(2.8) \begin{align}\sup_{\phi\in\mathcal{A}_{\Phi_0}}\mathbb{E}_{\mathbb{Q}}\bigl[V^{\Phi_0,\phi}_T\bigr]&\geq\sup_{\phi\in\mathcal{A}_{\Phi_0} \cap \mathcal{B}_n}\mathbb{E}_{\mathbb{Q}}\bigl[V^{\Phi_0,\phi}_T\bigr]\notag \\&=\sup_{\phi\in \mathcal{B}_n}\inf_{M\in\mathcal{M}^{\mathbb{Q}}_{[0,T]}}\mathbb{E}_{\mathbb{Q}}\biggl[V^{\Phi_0,\phi}_T+M_T\biggl(\Phi_0+\int_{0}^T\phi_t \,{\textrm{d}} t\biggr)\biggr]\notag \\&=\inf_{M\in\mathcal{M}^{\mathbb{Q}}_{[0,T]}}\sup_{\phi\in \mathcal{B}_n}\mathbb{E}_{\mathbb{Q}}\biggl[V^{\Phi_0,\phi}_T+M_T\biggl(\Phi_0+\int_{0}^T\phi_t \,{\textrm{d}} t\biggr)\biggr].\end{align}

Indeed, the inequality is obvious. The first equality follows from the fact that if $\phi\in \mathcal{B}_n\setminus \mathcal{A}_{\Phi_0}$ , then

$$\inf_{M\in\mathcal{M}^{\mathbb{Q}}_{[0,T]}}\mathbb{E}_{\mathbb{Q}}\biggl[M_T\biggl(\Phi_0+\int_{0}^T\phi_t \,{\textrm{d}} t\biggr)\biggr]=-\infty.$$

For the last equality in (2.8) we apply a minimax theorem. Consider the vector space $\mathcal{M}^{\mathbb{Q}}_{[0,T]}$ with the $L^2({\textrm{d}} t\otimes\mathbb{Q})$ norm and the set $\mathcal{B}_n$ with the weak topology which corresponds to $L^2({\textrm{d}} t\otimes\mathbb{Q})$ . Then both of these sets are convex subsets of topological vector spaces and the latter set is even compact. Moreover,

$$(\phi,M)\rightarrow \mathbb{E}_{\mathbb{Q}}\biggl[V^{\Phi_0,\phi}_T+M_T\biggl(\Phi_0+\int_{0}^T\phi_t \,{\textrm{d}} t\biggr)\biggr]$$

is upper semi-continuous and concave in $\phi$ and convex (indeed affine) in M. We can thus apply Theorem 4.2 in [Reference Sion16] to obtain the second equality.

Next, choose $M\in\mathcal{M}^{\mathbb{Q}}_{[0,T]}$ and introduce the process $\phi$ (which depends on n and M):

$$\phi_t\,:\!=\, \dfrac{n(M_t-S_t)}{\max\bigl(\Lambda n,\|M-S\|_{{L^2({\textrm{d}} t\otimes\mathbb{Q})}}\bigr)}, \quad t\in [0,T].$$

Observe that $\phi\in \mathcal{B}_n$ and simple computations give

\begin{align*}&\mathbb{E}_{\mathbb{Q}}\biggl[V^{\Phi_0,\phi}_T+M_T\biggl(\Phi_0+\int_{0}^T\phi_t \,{\textrm{d}} t\biggr)\biggr]\\&\quad =\mathbb{E}_{\mathbb{Q}}\biggl[\Phi_0 (M_0-S_0)+\int_{0}^T \phi_t (M_t-S_t) \,{\textrm{d}} t- \dfrac{\Lambda}{2}\int_{0}^T \phi^2_t \,{\textrm{d}} t\biggr]\\&\quad =\mathbb{E}_{\mathbb{Q}}[\Phi_0 (M_0-S_0)]+G_n\bigl( \|M-S\|_{L^2({\textrm{d}} t\otimes\mathbb{Q})}\bigr),\end{align*}

where

$$G_n(x) = \begin{cases} \dfrac{x^2}{2\Lambda} & \text{if $ x<\Lambda n$,}\\[7pt] n x-\dfrac{\Lambda}{2} n^2 & \text{otherwise}.\end{cases}$$

Since $n\in\mathbb{N}$ and $M\in\mathcal{M}^{\mathbb{Q}}_{[0,T]}$ were arbitrary, from (2.7)–(2.8) we conclude that there exists a sequence of martingales $M^n\in\mathcal{M}^{\mathbb{Q}}_{[0,T]}$ , $n\in\mathbb{N}$ such that

(2.9) \begin{equation}\mathbb{E}_{\mathbb{Q}}[X]> \sup_{n\in\mathbb{N}} \bigl\{\mathbb{E}_{\mathbb{Q}}\bigl[\Phi_0 \bigl(M^n_0-S_0\bigr)\bigr]+G_n\bigl(\|M^n-S\|_{L^2({\textrm{d}} t\otimes\mathbb{Q})}\bigr)\bigr\}.\end{equation}

From the fact that ${{{\textrm{d}}\mathbb{Q}}/{{\textrm{d}}\mathbb{P}}}$ is bounded we have $\mathbb{E}_{\mathbb{Q}}[X]<\infty$ , so $\sup_{n\in\mathbb{N}}\|M^n-S\|_{L^2({\textrm{d}} t\otimes\mathbb{Q})}<\infty$ . Thus from (2.9) we obtain that for any $k>({{1}/{\Lambda}})\sup_{n\in\mathbb{N}}\|M^n-S\|_{L^2({\textrm{d}} t\otimes\mathbb{Q})}$ ,

$$\mathbb{E}_{\mathbb{Q}}[X]>\mathbb{E}_{\mathbb{Q}}\biggl[\Phi_0 \bigl(M^k_0-S_0\bigr)+\dfrac{1}{2\Lambda}\int_{0}^T |M^k_t-S_t|^2 \,{\textrm{d}} t\biggr],$$

which is a contradiction to (2.6). This completes the proof.

Lemma 2.2. There exists a unique minimizer

$$\Bigl(\hat{\mathbb{Q}},\hat M\in \mathcal{M}^{\hat{\mathbb{Q}}}_{[0,T)}\Bigr) $$

for the optimization problem given by the right-hand side of (2.3).

Proof. Let C denote the set of all pairs (Z, Y) such that $Z>0$ is a random variable satisfying $\mathbb{E}_{\mathbb{P}}[Z]=1$ , $\mathbb{E}_{\mathbb{P}}[ Z\log Z]<\infty$ , and $Y=(Y_t)_{0\leq t< T}$ is a $\mathbb{P}$ -martingale satisfying

$$ \mathbb{E}_{\mathbb{P}}\biggl[\int_{0}^T \dfrac{Y^2_t}{\mathbb{E}_{\mathbb{P}}[Z\mid \mathcal{F}_t]}\,{\textrm{d}} t\biggr]<\infty. $$

Note that the function $(z,y)\rightarrow y^2/z$ is convex on $\mathbb{R}_{++}\times\mathbb{R}$ , so C is a convex set. Define a map $\Psi\,:\, C\rightarrow \mathbb{R}$ by

$$\Psi(Z,Y)\,:\!=\, \mathbb{E}_{\mathbb{P}}\biggl[\dfrac{1}{\alpha} Z\log Z+\Phi_0 (Y_0-S_0 Z)+\dfrac{Z}{2\Lambda}\int_{0}^T\biggl(\dfrac{Y_t}{\mathbb{E}_{\mathbb{P}}[Z\mid \mathcal{F}_t]}-S_t\biggr)^2 \,{\textrm{d}} t\biggr].$$

Observe that there is a bijection

$$(Y,Z)\in C\leftrightarrow \Bigl(\mathbb{Q}\in\mathcal{Q},M\in\mathcal{M}^{\mathbb{Q}}_{[0,T)}\Bigr) $$

given by

$$Z\,:\!=\, \dfrac{{\textrm{d}}\mathbb{Q}}{{\textrm{d}}\mathbb{P}}\quad \text{and}\quad M_t\,:\!=\, \dfrac{Y_t}{\mathbb{E}_{\mathbb{P}}[Z\mid \mathcal{F}_t]},\quad t\in [0,T), $$

and for this bijection we have

$$\Psi(Z,Y)=\mathbb{E}_{\mathbb{Q}}\biggl[\dfrac{1}{\alpha}\log\biggl(\dfrac{{\textrm{d}}\mathbb{Q}}{{\textrm{d}}\mathbb{P}}\biggr)+\Phi_0 (M_0-S_0)+\dfrac{1}{2\Lambda}\int_{0}^T |M_t-S_t|^2 \,{\textrm{d}} t\biggr].$$

Thus, in order to prove the lemma, it is sufficient to show that there exists a unique minimizer for $\Psi\,:\, C\rightarrow \mathbb{R}$ . Note that the convexity of the map $(z,y)\rightarrow y^2/z$ implies the convexity of $\Psi$ . From the strict convexity of the functions $z\rightarrow z\log z$ and the map $y\rightarrow y^2$ , it follows that $\Psi$ is strictly convex, and hence the uniqueness of a minimizer is immediate. It remains to prove the existence of a minimizer.

Let $(Z^n,Y^n)\in C$ , $n\in\mathbb{N}$ be a sequence such that

(2.10) \begin{equation}\lim_{n\rightarrow\infty}\Psi(Z^n,Y^n)=\inf_{(Z,Y)\in C}\Psi(Z,Y).\end{equation}

Assumption 2.1 and (2.10) yield that without loss of generality we can assume that

$$\sup_{n\in\mathbb{N}}\mathbb{E}_{\mathbb{P}} [ Z^n\log {Z^n}]<\infty\quad \text{and}\quad \sup_{n\in\mathbb{N}}\mathbb{E}_{\mathbb{P}}\biggl[\int_{0}^T \dfrac{|Y^n_t|^2} {\mathbb{E}_{\mathbb{P}}[Z^n\mid \mathcal{F}_t]}\,{\textrm{d}} t\biggr]<\infty.$$

Thus the de la Vallée–Poussin criterion ensures that $Z^n$ , $n\in\mathbb{N}$ are uniformly integrable. Let us argue that for any $s<T$ the random variables $Y^n_s$ , $n\in\mathbb{N}$ are uniformly integrable

Fix $s<T$ . From the Jensen inequality and fact that $Y^n$ is a martingale, it follows that for any given n the function

$$t\rightarrow\mathbb{E}_{\mathbb{P}}\biggl[\dfrac{|Y^n_t|^2}{\mathbb{E}_{\mathbb{P}}[Z^n\mid \mathcal{F}_t]}\biggr]$$

is non-decreasing, and hence

$$\sup_{n\in\mathbb{N}}\mathbb{E}_{\mathbb{P}}\biggl[ \dfrac{|Y^n_s|^2}{\mathbb{E}_{\mathbb{P}}[Z^n\mid \mathcal{F}_s]}\biggr]<\infty.$$

This, together with the inequality $\sup_{n\in\mathbb{N}}\mathbb{E}_{\mathbb{P}} [ Z^n\log {Z^n}]<\infty$ , gives $\sup_{n\in\mathbb{N}}\mathbb{E}_{\mathbb{P}}[ g|Y^n_s|]<\infty$ , where

$$g(y)\,:\!=\, \inf_{z>0} \biggl\{\dfrac{y^2}{z}+z\log z\biggr\},\quad y>0.$$

For a given $y>0$ , the function $z\rightarrow {{y^2}/{z}}+z\log z$ is convex and attains its minimum at the unique $z=z(y)$ which satisfies $1+\log z={{y^2}/{z^2}}$ . Obviously $\lim_{y\rightarrow\infty}z(y)=\infty$ and $y=z(y)\sqrt{1+\log\!(z(y))}$ . Thus

$$\lim_{y\rightarrow\infty}\dfrac{g(y)}{y}\geq \lim_{z\rightarrow\infty} \dfrac{z\log z}{z\sqrt{1+\log z }}=\infty.$$

Hence, from the de la Vallée–Poussin criterion, we conclude that $Y^n_s$ , $n\in\mathbb{N}$ are uniformly integrable.

Next, define the sequence of random variables $(H_n)_{n\in\mathbb{N}}\in L^1({\textrm{d}} t\otimes \mathbb{P}, [0,2T]\times \Omega)$ by

$$H^n(t,\omega) \,:\!=\, \begin{cases} Y^n_t(\omega) & \text{if $ t<T$,}\\ Z^n(\omega) & \text{otherwise.}\end{cases}$$

Observe that the relations

$$ \sup_{n\in\mathbb{N}}\mathbb{E}_{\mathbb{P}} [ Z^n\log {Z^n}]<\infty,\quad \sup_{n\in\mathbb{N}}\mathbb{E}_{\mathbb{P}}\biggl[\int_{0}^T \dfrac{|Y^n_t|^2} {\mathbb{E}_{\mathbb{P}}[Z^n\mid \mathcal{F}_t]}\,{\textrm{d}} t\biggr]<\infty,\quad \lim_{y\rightarrow\infty}\frac{g(y)}{y}=\infty$$

yield that $(H^n)_{n\in\mathbb{N}}$ is a bounded sequence in $L^1({\textrm{d}} t\otimes \mathbb{P}, [0, 2T]\times \Omega)$ . Hence, from the well-known Komlós argument (see Theorem 1.3 in [Reference Delbaen and Schachermayer6]), there exists a sequence $(\hat H^n)\in \operatorname{conv}(H^n,H^{n+1}\cdots)$ , $n\in\mathbb{N}$ such that $(\hat H^n)_{n\in\mathbb{N}}$ converge in probability ( ${\textrm{d}} t\otimes\mathbb{P}$ ) to some $\hat H \in L^1({\textrm{d}} t\otimes \mathbb{P}, [0, 2T]\times \Omega)$ . From the bounded convergence theorem, $\arctan(\hat H^n)\rightarrow\arctan(H)$ in $L^1({\textrm{d}} t\otimes \mathbb{P}, [0, 2T]\times \Omega)$ . Thus, from Fubini’s theorem, we obtain that there exists a dense set $\mathcal{I}\subset [0,2T]$ such that for any $t\in \mathcal{I}$ , $(\hat H^n_t)_{n\in\mathbb{N}}$ converge in probability to $\hat H_t$ . Choose a countable subset $\mathcal{J}\subset \mathcal{I}\cap [0,T)$ of the form $\mathcal{J}=\{t_1<t_2<\cdots\}$ such that $\lim_{n\rightarrow \infty} t_n=T$ .

We conclude that there exist convex combinations (the same combinations as for $H^n$ ) $(\hat Z^n,\hat Y^n)\in \operatorname{conv}((Z^{n},Y^{n}),(Z^{n+1},Y^{n+1})\cdots)$ , $n\in\mathbb{N}$ , such that the sequence $(\hat Z^n)_{n\in\mathbb{N}}$ converges in probability to some $\hat Z$ , and for any $m\in\mathbb{N}$ the sequence $(\hat Y^n_{t_m})_{n\in\mathbb{N}}$ converges in probability to some $U_m$ . From the uniform integrability of the sequences $(Z^n)_{n\in\mathbb{N}}$ and $(Y^n_{t_m})_{n\in\mathbb{N}}$ , $m\in\mathbb{N}$ , we conclude that

(2.11) \begin{equation}\hat Z^n\rightarrow \hat Z \quad \text{in $ L^1(\mathbb{P})$,}\end{equation}

and for any $m\in\mathbb{N}$

(2.12) \begin{equation}\hat Y^n_{t_m}\rightarrow U_m\quad \text{in $ L^1(\mathbb{P})$.}\end{equation}

Notice that (2.11) implies $\mathbb{E}_{\mathbb{P}}[\hat Z]=1$ . Moreover, the function $x\rightarrow x\log x$ , $x>0$ is bounded from below, so from the Fatou lemma and the convexity of the function $x\rightarrow x\log x$ we get $\mathbb{E}_{\mathbb{P}}[ \hat Z\log {\hat Z}]\leq \sup_{n\in\mathbb{N}}\mathbb{E}_{\mathbb{P}} [ Z^n\log {Z^n}]<\infty$ .

Next, define the process $\hat Y=(\hat Y_t)_{0\leq t<T}$ by

$$\hat Y_t\,:\!=\, \sum_{m=1}^{\infty}\mathbf 1_{\{t\in [t_{m-1},t_{m})\}} \mathbb{E}_{\mathbb{P}}[U_m\mid \mathcal{F}_t], $$

where we set $t_0\,:\!=\, 0$ . Clearly, for any n the process $\hat Y^n=\hat Y^n_{[0,T)}$ is a martingale (convex combination of martingales), so from (2.12) we obtain that $\hat Y=\hat Y_{[0,T)}$ is a martingale and

(2.13) \begin{equation}\hat Y^n_t\rightarrow \hat Y_t \quad \text{in $ L^1(\mathbb{P})$}\quad \text{for all $t\in [0,T]$.}\end{equation}

From (2.11) we get

(2.14) \begin{equation}\mathbb{E}_{\mathbb{P}}[\hat Z^n\mid \mathcal{F}_t]\rightarrow \mathbb{E}_{\mathbb{P}}[\hat Z\mid \mathcal{F}_t] \quad \text{in $ L^1(\mathbb{P})$} \quad \text{for all $t\in [0,T]$.}\end{equation}

By combining the Fatou lemma, the convexity of $\Psi$ , (2.10), and (2.13)–(2.14), we obtain

$$\Psi(\hat Z,\hat Y)\leq \lim_{n\rightarrow\infty}\Psi(\hat Z^n,\hat Y^n)=\inf_{(Z,Y)\in C}\Psi(Z,Y).$$

A priori it might happen that ${\textrm{d}} t\otimes \mathbb{P}(\mathbb{E}_{\mathbb{P}}[\hat Z\mid \mathcal{F}_t]=0)>0$ , so we need to be careful with the definition of $\Psi(\hat Z,\hat Y)$ . From (2.13)–(2.14) it follows that we have the convergence in probability $\mathbb{E}_{\mathbb{P}}[\hat Z^n\mid \mathcal{F}_{\cdot}]\rightarrow \mathbb{E}_{\mathbb{P}}[\hat Z\mid \mathcal{F}_{\cdot}]$ and $\hat Y^n\rightarrow \hat Y$ with respect to the product measure ${\textrm{d}} t\otimes\mathbb{P}$ . Hence, by taking a subsequence (which for simplicity we still denote by n), we can assume that $\mathbb{E}_{\mathbb{P}}[\hat Z^n\mid \mathcal{F}_{\cdot}]\rightarrow \mathbb{E}_{\mathbb{P}}[\hat Z\mid \mathcal{F}_{\cdot}]$ and $\hat Y^n\rightarrow \hat Y$ ${\textrm{d}} t\otimes\mathbb{P}$ a.s. Since $\lim_{n\rightarrow\infty}\Psi(\hat Z^n,\hat Y^n)<\infty$ , from the Fatou lemma it follows that

$$\mathbb{E}_{\mathbb{P}}\biggl[\int_{0}^T\biggl(\lim\inf_{n\rightarrow \infty}\dfrac{|\hat Y^n_t|^2}{\mathbb{E}_{\mathbb{P}}[\hat Z^n\mid \mathcal{F}_t]}\biggr)\,{\textrm{d}} t \biggr]<\infty.$$

In particular,

$$\lim\inf_{n\rightarrow \infty}\dfrac{|\hat Y^n_t|^2}{\mathbb{E}_{\mathbb{P}}[\hat Z^n\mid \mathcal{F}_t]}<\infty\quad {\textrm{d}} t\otimes \text{${\mathbb{P}}$ a.s.}$$

This together with the above convergence of the sequences $(\mathbb{E}_{\mathbb{P}}[\hat Z^n\mid \mathcal{F}_{\cdot}])_{n\in\mathbb{N}}$ and $(\hat Y^n)_{n\in\mathbb{N}}$ yields the implication $\mathbb{E}_{\mathbb{P}}[\hat Z\mid \mathcal{F}_t]=0\Rightarrow\hat Y_t=0$ ${\textrm{d}} t\otimes\mathbb{P}$ a.s. Thus we set

$$\dfrac{\hat Y_t}{\mathbb{E}_{\mathbb{P}}[\hat Z\mid \mathcal{F}_t]}\,:\!=\, 0$$

if $\mathbb{E}_{\mathbb{P}}[\hat Z\mid \mathcal{F}_t]=0$ .

Finally, in order to complete the proof it remains to show that $\hat Z>0$ a.s. To this end, define the function $f\,:\, [0,1]\rightarrow\mathbb{R}$ by $f(\alpha)\,:\!=\, \Psi(\alpha +(1-\alpha)\hat Z,\hat Y)$ , $\alpha\in [0,1].$ From the convexity of $\Psi$ it follows that f is convex. The inequality $\Psi(\hat Z,\hat Y)\leq\inf_{( Z, Y)\in C}\Psi( Z, Y)$ yields that the right-hand derivative $f^{\prime}(0{+})\geq 0$ . Moreover, from the monotone (derivative of a convex function) convergence theorem it follows that we can interchange derivative and expectation. Thus

\begin{align*} 0&\leq f^{\prime}(0{+})\\ &= \mathbb{E}_{\mathbb{P}}\biggl[\dfrac{1}{\alpha}(1-\hat Z)\log\hat Z-\Phi_0S_0(1-\hat Z)\biggr]\\&\quad +\dfrac{1}{2\Lambda}\mathbb{E}_{\mathbb{P}}\biggl[(1-\hat Z)\int_{0}^TS^2_t \,{\textrm{d}} t+\int_{0}^T\mathbf{1}_{\{\mathbb{E}_{\mathbb{P}}[\hat Z\mid \mathcal{F}_t]>0\}}\biggl(\dfrac{\hat Y^2_t}{\mathbb{E}_{\mathbb{P}}[\hat Z\mid \mathcal{F}_t]}-\dfrac{\hat Y^2_t}{\mathbb{E}^2_{\mathbb{P}}[\hat Z\mid \mathcal{F}_t]}\biggr)\,{\textrm{d}} t\biggr].\end{align*}

We conclude that $\mathbb{E}_{\mathbb{P}}[\!\log\hat Z]>-\infty$ and complete the proof.

Now we have all the ingredients for the proof of Theorem 2.1.

Proof. Let $\bigl(\hat{\mathbb{Q}}\in\mathcal{Q},\hat M\in\mathcal{M}^{\hat{\mathbb{Q}}}_{[0,T]}\bigr)$ be the minimizer from Lemma 2.2. Denote

$$D\,:\!=\,\mathbb{E}_{\hat{\mathbb{Q}}}\biggl[\dfrac{1}{\alpha}\log\biggl(\dfrac{{\textrm{d}}\hat{\mathbb{Q}}}{{\textrm{d}}\mathbb{P}}\biggr)+\Phi_0(\hat M_0-S_0)+\dfrac{1}{2\Lambda}\int_{0}^T|\hat {M}_t-S_t|^2 \,{\textrm{d}} t\biggr].$$

Let us show that there exists $\hat\phi\in\mathcal{A}_{\Phi_0}$ such that

(2.15) \begin{equation}V^{\Phi_0,\hat\phi}_T\geq D-\dfrac{1}{\alpha} \log\biggl(\dfrac{{\textrm{d}}\hat{\mathbb{Q}}}{{\textrm{d}}\mathbb{P}}\biggr).\end{equation}

We apply Lemma 2.1 for

$$X\,:\!=\, D-\dfrac{1}{\alpha} \log\biggl(\dfrac{{\textrm{d}}\hat{\mathbb{Q}}}{{\textrm{d}}\mathbb{P}}\biggr).$$

Clearly X satisfies (2.5), so we need to show that for any $\mathbb{Q}\in\mathcal{Q}$ and $M\in \mathcal{M}^{\mathbb{Q}}_{[0,T]}$ we have

(2.16) \begin{equation}\mathbb{E}_{\mathbb{Q}}\biggl[\dfrac{1}{\alpha} \log\biggl(\dfrac{{\textrm{d}}\hat{\mathbb{Q}}}{{\textrm{d}}\mathbb{P}}\biggr)+\Phi_0(M_0-S_0)+\dfrac{1}{2\Lambda}\int_{0}^T |M_t-S_t|^2 \,{\textrm{d}} t\biggr]\geq D.\end{equation}

Choose $\mathbb{Q}\in\mathcal{Q}$ and $M\in \mathcal{M}^{\mathbb{Q}}_{[0,T]}$ . Define $(Z,Y),(\hat Z,\hat Y)\in C$ by

$$Z=\dfrac{{\textrm{d}}\mathbb{Q}}{{\textrm{d}}\mathbb{P}},\quad \hat Z=\dfrac{{\textrm{d}}\hat{\mathbb{Q}}}{{\textrm{d}}\mathbb{P}},\quad Y_t=M_t\mathbb{E}_{\mathbb{P}}[Z\mid \mathcal{F}_t]\quad \text{and}\quad \hat Y_t=\hat M_t\mathbb{E}_{\mathbb{P}}[\hat Z\mid \mathcal{F}_t],\quad t<T.$$

Define the convex function $h\,:\, [0,1]\rightarrow\mathbb{R}_{+}$ by

$$h(\alpha)\,:\!=\, \Psi(\alpha Z+(1-\alpha)\hat Z,\alpha Y+(1-\alpha)\hat Y),\quad \alpha\in [0,1].$$

The function h attains its minimum at $\alpha=0$ , so $h^{\prime}(0{+})\geq 0$ . Again, the monotone convergence theorem allows us to interchange derivative and expectation. Thus

(2.17) \begin{align} 0&\leq h^{\prime}(0{+}) \notag \\ &= \mathbb{E}_{\mathbb{P}}\biggl[\dfrac{1}{\alpha}(Z-\hat Z)\log\hat Z+\Phi_0(Y_0-\hat Y_0)-\Phi_0 S_0(Z_0-\hat Z_0)\biggr]\notag \\&\quad +\dfrac{1}{2\Lambda}\mathbb{E}_{\mathbb{P}}\biggl[\int_{0}^T((Z-\hat Z) S^2_t-2(Y_t-\hat Y_t)S_t)\,{\textrm{d}} t\biggr]\notag \\&\quad +\dfrac{1}{2\Lambda}\mathbb{E}_{\mathbb{P}}\biggl[\dfrac{1}{2\Lambda}\int_{0}^T\dfrac{2 \hat Y_t(Y_t-\hat Y_t)\mathbb{E}_{\mathbb{P}}[\hat Z\mid \mathcal{F}_t]-\mathbb{E}_{\mathbb{P}}[Z-\hat Z\mid \mathcal{F}_t]\hat Y^2_t}{\mathbb{E}^2_{\mathbb{P}}[\hat Z\mid \mathcal{F}_t]}\biggr].\end{align}

Observe that for any $t<T$

$$2Y_t\hat Y_t \mathbb{E}_{\mathbb{P}}[\hat Z\mid \mathcal{F}_t]\leq \mathbb{E}_{\mathbb{P}}[Z\mid \mathcal{F}_t]\hat Y^2_t+\dfrac{Y^2_t \mathbb{E}^2_{\mathbb{P}}[\hat Z\mid \mathcal{F}_t]}{\mathbb{E}_{\mathbb{P}}[Z\mid \mathcal{F}_t]}.$$

This together with (2.17) gives

\begin{align*}0&\leq \mathbb{E}_{\mathbb{P}}\biggl[\dfrac{1}{\alpha}(Z-\hat Z)\log\hat Z+\Phi_0(Y_0-\hat Y_0)-\Phi_0 S_0(Z_0-\hat Z_0)\biggr]\\&\quad +\dfrac{1}{2\Lambda}\mathbb{E}_{\mathbb{P}}\biggl[\int_{0}^T((Z-\hat Z)S^2_t-2(Y_t-\hat Y_t)S_t)\,{\textrm{d}} t\biggr]\\&\quad +\dfrac{1}{2\Lambda}\mathbb{E}_{\mathbb{P}}\biggl[\int_{0}^T\biggl(\dfrac{Y^2_t}{\mathbb{E}_{\mathbb{P}}[Z\mid \mathcal{F}_t]}-\dfrac{\hat Y^2_t}{\mathbb{E}_{\mathbb{P}}[\hat Z\mid \mathcal{F}_t]}\biggr)\,{\textrm{d}} t\biggr],\end{align*}

which is exactly (2.16). We conclude that (2.15) holds true, and thus

(2.18) \begin{equation}\mathbb{E}_{\mathbb{P}}\bigl[{\textrm{e}}^{-\alpha V^{\Phi_0,\hat\phi}_T}\bigr]\leq {\textrm{e}}^{-\alpha D}.\end{equation}

We arrive at the final step of the proof. Choose $\phi\in\mathcal{A}_{\Phi_0}$ . Without loss of generality, assume that

$$\mathbb{E}_{\mathbb{P}}\bigl[{\textrm{e}}^{-\alpha V^{\Phi_0,\phi}_T}\bigr]<\infty,$$

and hence arguments similar to those in the proof of Lemma 2.1 yield

$$\mathbb{E}_{\hat{\mathbb{Q}}}\biggl[\int_{0}^T\phi^2_t \,{\textrm{d}} t \biggr]<\infty.$$

Let us argue that for any $\gamma>0$

(2.19) \begin{align}&\mathbb{E}_{\mathbb{P}}\Bigl[{\textrm{e}}^{-\alpha V^{\Phi_0,\phi}_T}\Bigr]\notag \\ &\quad \geq\alpha\gamma\mathbb{E}_{\hat {\mathbb{Q}}}\biggl[\Phi_0 S_0+\int_{0}^T S_t\phi_t \,{\textrm{d}} t+\dfrac{\Lambda}{2}\int_{0}^T \phi^2_t \,{\textrm{d}} t\biggr]-\mathbb{E}_{\mathbb{P}}\big[\gamma \hat Z(\!\log\!(\gamma \hat Z)-1)\big]\notag \\ &\quad =\alpha\gamma\mathbb{E}_{\hat {\mathbb{Q}}}\biggl[\Phi_0 (S_0-\hat M_0)+\int_{0}^T (S_t-\hat M_t)\phi_t \,{\textrm{d}} t+\dfrac{\Lambda}{2}\int_{0}^T \phi^2_t \,{\textrm{d}} t\biggr]-\gamma(\!\log \gamma-1)-\gamma \mathbb{E}_{\hat {\mathbb{Q}}}[\!\log \hat Z]\notag \\ &\quad \geq\alpha \gamma\mathbb{E}_{\hat{\mathbb{Q}}}\biggl[ \Phi_0(S_0-\hat M_0)-\dfrac{1}{2\Lambda}\int_{0}^T|\hat M_t-S_t|^2 \,{\textrm{d}} t\biggr]-\gamma(\!\log \gamma-1)-\gamma\mathbb{E}_{\hat{\mathbb{Q}}}[\!\log \hat Z].\end{align}

Indeed, the first inequality follows from the simple inequality ${\textrm{e}}^x\geq xy-y(\!\log y-1)$ , $x\in\mathbb{R}$ , $y>0$ . The equality is due to

$$\mathbb{E}_{\hat {\hat{\mathbb{Q}}}}\biggl[\Phi_0 \hat M_0+\int_{0}^T \hat M_t \phi_t \,{\textrm{d}} t\biggr]=0;$$

for this we need the bound $\mathbb{E}_{\hat{\mathbb{Q}}}\bigl[\int_{0}^T\phi^2_t \,{\textrm{d}} t \bigr]<\infty$ . The last inequality follows from the maximization of the quadratic pattern in $\phi$ .

Optimizing (2.19) in $\gamma>0$ , we arrive at

(2.20) \begin{equation}\mathbb{E}_{\mathbb{P}}\bigl[{\textrm{e}}^{-\alpha V^{\Phi_0,\phi}_T}\bigr]\geq {\textrm{e}}^{-\alpha D}.\end{equation}

Since $\phi\in\mathcal{A}_{\Phi_0}$ was arbitrary, from (2.18), (2.20) and the fact that $\bigl(\hat{\mathbb{Q}}\in\mathcal{Q},\hat M\in\mathcal{M}^{\hat{\mathbb{Q}}}_{[0,T]}\bigr)$ is the minimizer from Lemma 2.2, we obtain (2.3). Moreover, note that there is an equality in (2.19) if and only if

$$\phi=\dfrac{\hat M-S}{\Lambda}\quad {\textrm{d}} t\otimes\text{$\mathbb{P}$ a.s.}$$

This yields (2.4) and completes the proof.

3. Explicit computations in the Bachelier model

In this section we assume that the probability space $(\Omega, \mathcal{F}, \mathbb{P})$ carrying a one-dimensional Wiener process $W=(W_t)_{t \in [0,T]}$ and the filtration $(\mathcal{F}_t)_{t \in [0,T]}$ is the natural augmented filtration generated by W. The risky asset S is given by

(3.1) \begin{equation}S_t=S_0+\sigma W_t+\mu t, \quad t\in [0,T],\end{equation}

where $S_0\in\mathbb{R}$ is the initial asset price, $\sigma>0$ is the constant volatility, and $\mu\in\mathbb{R}$ is the constant drift.

Consider a European contingent claim with the quadratic payoff $\mathcal{X}=\kappa S^2_T$ , where $\kappa\in (0,{{1}/{(2\alpha\sigma^2 T)}})$ is a constant. We say that $\hat\phi\in\mathcal{A}_{\Phi_0}$ is a utility-based optimal hedging strategy if

\begin{equation*} \mathbb{E}_{\mathbb{P}}\Bigl[{\textrm{e}}^{\alpha\bigl(\mathcal{X}-V^{\Phi_0,\hat\phi}_T\bigr)}\Bigr]=\inf_{\phi\in\mathcal{A}_{\Phi_0}} \mathbb{E}_{\mathbb{P}}\Bigl[{\textrm{e}}^{\alpha\bigl(\mathcal{X}-V^{\Phi_0,\phi}_T\bigr)}\Bigr]. \end{equation*}

Theorem 3.1. Let $\rho\,:\!=\, {{\alpha\sigma^2}/{\Lambda}}$ be the risk–liquidity ratio. The utility-based optimal hedging strategy $\hat \phi_t$ , $t\in [0,T)$ is unique and given by the feedback form

(3.2) \begin{equation}\hat\phi_t=\dfrac{\big(2\kappa S_t+{{\mu}/{\big(\alpha\sigma^2\big)}}\big)\tanh\!\big(\sqrt\rho(T-t)/2\big)-\big(\!\coth\!\big(\sqrt\rho (T-t)\big)-2\Lambda\sqrt{\rho}\kappa\big)\hat\Phi_t}{\frac{1}{\sqrt\rho}-4\kappa\Lambda \tanh\!\big(\sqrt\rho(T-t)/2\big)},\end{equation}

where

$$\hat\Phi_t\,:\!=\, \Phi_0+\int_{0}^t\hat\phi_s \,{\textrm{d}} s,\quad t\in [0,T].$$

Our feedback description (3.2) can be interpreted as follows. From the simple inequality $\tanh (z)<z$ , for all $ z>0$ and the assumption $\kappa\in (0,{{1}/{(2\alpha\sigma^2 T)}})$ , it follows that the denominator in (3.2) is positive and $\coth(\sqrt\rho (T-t))-2\Lambda\sqrt{\rho}\kappa>0$ . Thus the optimal trading strategy is a mean reverting strategy towards the process

$$\dfrac{\big(2\kappa S_t+{{\mu}/{\big(\alpha\sigma^2\big)}}\big)\tanh\!\big(\sqrt\rho(T-t)/2\big)}{\coth\!\big(\sqrt\rho (T-t)\big)-2\Lambda\sqrt{\rho}\kappa},\quad t\in [0,T].$$

This process can be viewed as a tradeoff between the optimal trading strategy in the frictionless case $2\kappa S_t+{{\mu}/{\big(\alpha\sigma^2\big)}}$ , $t\in [0,T]$ and the liquidation requirement.

Next, we prove Theorem 3.1.

Proof. First, from the assumption $\kappa\in (0,{{1}/{(2\alpha\sigma^2 T)}})$ , it follows that $\mathbb{E}_{\mathbb{P}}\big[{\textrm{e}}^{\alpha\mathcal{X}}\big]<\infty$ . Thus we define the probability measure $\tilde{\mathbb{P}}$ by

$$\dfrac{{\textrm{d}}\tilde{\mathbb{P}}}{{\textrm{d}}\mathbb{P}}\,:\!=\, \dfrac{{\textrm{e}}^{\alpha \mathcal{X}}}{\mathbb{E}_{\mathbb{P}}\big[{\textrm{e}}^{\alpha\mathcal{X}}\big]}.$$

Observe that for any probability measure $\mathbb{Q}\sim\mathbb{P}$ we have

$$\mathbb{E}_{\mathbb{Q}}\biggl[\!\log\biggl(\dfrac{{\textrm{d}}\mathbb{Q}}{{\textrm{d}}\tilde{\mathbb{P}}}\biggr)\biggr]=\mathbb{E}_{\mathbb{Q}}\biggl[\!\log\biggl(\dfrac{{\textrm{d}}\mathbb{Q}}{{\textrm{d}}\mathbb{P}}\biggr)-\alpha \mathcal{X}\biggr]+\alpha \log\!\big(\mathbb{E}_{\mathbb{P}}\big[{\textrm{e}}^{\alpha\mathcal{X}}\big]\big).$$

From Hölder’s inequality and Assumption 2.1 it follows that there exists $b>0$ such that

$$\mathbb{E}_{\tilde{\mathbb{P}}}\biggl[\exp\biggl(b\sup_{0 \leq t\leq T} S^2_t\biggr)\biggr]<\infty.$$

Hence, using Theorem 2.1 for the probability measure $\tilde{\mathbb{P}}$ , we obtain

(3.3) \begin{align}&\min_{\phi\in\mathcal{A}_{\Phi_0}}\biggl\{\dfrac{1}{\alpha}\log\mathbb{E}_{\mathbb{P}}\bigl[\exp\bigl(\alpha\bigl(\mathcal{X}- V^{\Phi_0,\phi}_T\bigr)\bigr) \bigr]\biggr\}\notag\\&\quad = \sup_{\mathbb{Q}\in\mathcal{Q}}\sup_{M\in\mathcal{M}^{\mathbb{Q}}_{[0,T)}}\mathbb{E}_{\mathbb{Q}}\biggl[\mathcal{X}-\dfrac{1}{\alpha}\log\biggl(\dfrac{{\textrm{d}}\mathbb{Q}}{{\textrm{d}}\mathbb{P}}\biggr)-\Phi_0(M_0-S_0)-\dfrac{1}{2\Lambda}\int_{0}^T |M_t-S_t|^2 \,{\textrm{d}} t\biggr].\end{align}

Moreover, there exists a unique maximizer $\bigl(\hat{\mathbb{Q}}\in\mathcal{Q},\hat M\in \mathcal{M}^{\hat {\mathbb{Q}}}_{[0,T)}\bigr)$ for the right-hand side of (3.3), and the process given by (2.4) is the unique utility-based optimal hedging strategy.

Observe that by the Markov property of Brownian motion, in order to prove Theorem 3.1 it is sufficient to establish (3.2) for $t=0$ . Thus, in view of (2.4), it remains to establish that

(3.4) \begin{equation}\dfrac{\hat M_0-S_0}{\Lambda}=\dfrac{\big(2\kappa S_0+{{\mu}/{\big(\alpha\sigma^2\big)}}\big)\tanh\!\big(\sqrt\rho T/2\big)-\big(\!\coth\!\big(\sqrt\rho T\big)-2\Lambda\sqrt{\rho}\kappa\big)\Phi_0}{\frac{1}{\sqrt\rho}-4\kappa\Lambda \tanh\!\big(\sqrt\rho T/2\big)}.\end{equation}

To this end, let $\mathbb{Q}\in\mathcal{Q}$ and $M\in\mathcal{M}^{\mathbb{Q}}_{[0,T)}$ . From the Girsanov theorem it follows that there exists a progressively measurable process $\theta\in L^2({\textrm{d}} t\otimes\mathbb{Q})$ such that

$$\mathbb{E}_{\mathbb{Q}}[\!\log\!({\textrm{d}}\mathbb{Q}/{\textrm{d}}\mathbb{P})]=\mathbb{E}_{\mathbb{Q}}\biggl[\int_0^T\theta^2_s\,{\textrm{d}} s\biggr]/2<\infty\quad \text{and}\quad W^{\mathbb{Q}}_t\,:\!=\, W_t-\int_{0}^t\theta_s \,{\textrm{d}} s,\quad t\in [0,T]$$

is a $\mathbb{Q}$ -Brownian motion. By applying the martingale representation theorem, there exists a process $\gamma=(\gamma_t)_{0\leq t< T}$ such that

(3.5) \begin{equation} M_t=M_0+\sigma\int_{0}^t \gamma_s \,{\textrm{d}} W^{\mathbb{Q}}_s, \quad {\textrm{d}} t\otimes\text{$\mathbb{P}$ a.s.} \end{equation}

Moreover, by applying the martingale representation theorem for $\theta_t$ , $t\in [0,T]$ , we conclude that there exist a deterministic function $a_t$ , $t\in [0,T]$ and a jointly measurable process $\beta_{t,s}$ , $0\leq s\leq t\leq T$ such that $\beta_{t,s}$ is $\mathcal{F}_{t\wedge s}$ measurable and

(3.6) \begin{equation} \theta_t=a_t+\int_{0}^t \beta_{t,s}\,{\textrm{d}} W^{\mathbb{Q}}_s, \quad {\textrm{d}} t\otimes\text{$\mathbb{P}$ a.s.} \end{equation}

Set

$$ \nu_t\,:\!=\, \mu t+\sigma\int_{0}^t a_s \,{\textrm{d}} s,\quad t\in [0,T]\quad \text{and}\quad l_{t,s}\,:\!=\, \int_{s}^t \beta_{u,s}\,{\textrm{d}} u,\quad 0\leq s\leq t\leq T. $$

From Fubini’s theorem, (3.1), and (3.6),

(3.7) \begin{equation} S_t=S_0+\nu_t+\sigma \int_{0}^t (1+l_{t,s})\,{\textrm{d}} W^{\mathbb{Q}}_s, \quad t\in [0,T]. \end{equation}

Given the probability measure $\mathbb{Q}$ , we are looking for a martingale $\tilde M\in\mathcal{M}^{\mathbb{Q}}_{[0,T)}$ which maximizes the right-hand side of (3.3). By combining (3.5), (3.7) and applying the Itô isometry and Fubini’s theorem, we obtain

\begin{align*}&\mathbb{E}_{{\mathbb{Q}}}\biggl[\Phi_0( M_0-S_0)+\dfrac{1}{2\Lambda}\int_{0}^T|{M}_t-S_t|^2 \,{\textrm{d}} t\biggr]\\&\quad =\Phi_0(M_0-S_0)+\dfrac{1}{2\Lambda}\int_{0}^T (M_0-S_0-\nu_t )^2 \,{\textrm{d}} t+\dfrac{\sigma^2}{2\Lambda}\mathbb{E}_{\mathbb{Q}}\biggl[\int_{0}^T \int_{s}^T (\gamma_s-1- l_{t,s})^2 \,{\textrm{d}} t \,{\textrm{d}} s\biggr].\end{align*}

Given a and $\beta$ , we are looking for $\hat M_0$ and $\hat\gamma$ which minimize the above right-hand side. Observe that the right-hand side is a quadratic function in $M_0$ and $\gamma_s$ , $s\in [0,T)$ . Hence we obtain that the minimizer is unique and given by

(3.8) \begin{equation}\hat M_0=S_0+\dfrac{1}{T}\int_{0}^T \nu_t \,{\textrm{d}} t-\dfrac{\Phi_0\Lambda}{T}\end{equation}

and

(3.9) \begin{equation}\hat\gamma_s=1+\dfrac{1}{T-s}\int_{s}^T l_{t,s} \,{\textrm{d}} t, \quad s<T.\end{equation}

Finally, we compute the optimal $\nu$ . From the Itô isometry, Fubini’s theorem, and (3.6)–(3.7), we have

$$\mathbb{E}_{\mathbb{Q}}[S^2_T]=(S_0+\nu_T)^2+\sigma^2 \mathbb{E}_{\mathbb{Q}}\biggl[\int_{0}^T\int_{s}^T (1+l_{t,s})^2 \,{\textrm{d}} t \,{\textrm{d}} s\biggr]$$

and

$$\mathbb{E}_{\mathbb{Q}}\biggl[\!\log\biggl(\dfrac{{\textrm{d}}\mathbb{Q}}{{\textrm{d}}\mathbb{P}}\biggr)\biggr]=\dfrac{1}{2}\mathbb{E}_{\mathbb{Q}}\biggl[\int_0^T\theta^2_s\,{\textrm{d}} s\biggr]=\dfrac{1}{2}\biggl(\int_{0}^Ta^2_t \,{\textrm{d}} t+\mathbb{E}_{\mathbb{Q}}\biggl[\int_{0}^{T}\int_{s}^T \beta^2_{t,s} \,{\textrm{d}} t \,{\textrm{d}} s\biggr]\biggr).$$

These equalities together with (3.8)–(3.9) give

(3.10) \begin{align}&\sup_{M\in\mathcal{M}^{\mathbb{Q}}_{[0,T)}}\mathbb{E}_{\mathbb{Q}}\biggl[\mathcal{X}-\dfrac{1}{\alpha}\log\biggl(\dfrac{{\textrm{d}}\mathbb{Q}}{{\textrm{d}}\mathbb{P}}\biggr)-\Phi_0( M_0-S_0)-\dfrac{1}{2\Lambda}\int_{0}^T | M_t-S_t|^2 \,{\textrm{d}} t\biggr]\notag \\&\quad =\mathbb{E}_{\mathbb{Q}}\biggl[\mathcal{X}-\dfrac{1}{\alpha}\log\biggl(\dfrac{{\textrm{d}}\mathbb{Q}}{{\textrm{d}}\mathbb{P}}\biggr)-\Phi_0( \hat M_0-S_0)-\dfrac{1}{2\Lambda}\int_{0}^T |\hat M_t-S_t|^2 \,{\textrm{d}} t\biggr]\notag \\&\quad =I+\mathbb{E}_{\mathbb{Q}} \biggl[\int_{0}^T J_s \,{\textrm{d}} s\biggr],\end{align}

where

$$I=\kappa(S_0+\nu_T)^2-\dfrac{1}{2\alpha}\int_{0}^Ta^2_t \,{\textrm{d}} t+\dfrac{1}{2\Lambda}\biggl(\dfrac{1}{T}\biggl(\Phi_0\Lambda-\int_{0}^T\nu_t \,{\textrm{d}} t\biggr)^2-\int_{0}^T \nu^2_t \,{\textrm{d}} t\biggr)$$

and

$$J_s=\kappa\sigma^2\int_{s}^T (1+l_{t,s})^2 \,{\textrm{d}} t-\dfrac{1}{2\alpha}\int_{s}^T\beta^2_{t,s} \,{\textrm{d}} t+\dfrac{1}{2\Lambda}\biggl(\dfrac{1}{T-s}\biggl(\int_{s}^T l_{t,s} \,{\textrm{d}} t\biggr)^2-\int_{s}^T l^2_{t,s} \,{\textrm{d}} t\biggr).$$

From Proposition 4.1 we conclude that the optimal $\nu$ satisfies (4.2). Hence from (3.8) we obtain (3.4) and complete the proof.

Remark 3.1. By applying (3.10) we can also compute the the right-hand side of (3.3). This requires computing the maximal I and for any $s\in [0,T]$ computing the maximal $J_s$ . Observe that the latter is a deterministic variational problem where the control is $l_{\cdot,s}$ , $\cdot\in [s,T]$ . Computing both I and $J_s$ , $s\in [0,T]$ can be done by computing the value which corresponds to the optimization problem given by (4.1) (for $J_s$ replace T with $T-s$ , $S_0,\sigma$ with 1, and $\mu,\Phi_0$ with 0). The computations are quite cumbersome and hence omitted.

Remark 3.2. Note that the quadratic structure of the payoff $\mathcal{X}$ used in (3.10) is essential in reducing the dual problem to a deterministic control problem. This is due to the Itô isometry. Although for a general payoff the dual representation does not allow us to obtain an explicit solution, it can still be used for utility-based hedging problems. For instance, the recent paper [Reference Dolinskyi and Dolinsky8] applies Theorem 2.1 and, for a general European contingent claim in the Bachelier model, computes the scaling limit of the corresponding utility indifference prices for a vanishing price impact which is inversely proportional to the risk aversion.

4. Auxiliary result

The following result deals with a purely deterministic setup.

Proposition 4.1. Let $\Gamma$ be the space of all continuous functions $\delta\,:\, [0,T]\rightarrow \mathbb{R}$ that are differentiable almost everywhere (with respect to the Lebesgue measure) and satisfy $\delta(0)=0$ . Then the maximizer $\hat\delta\in\Gamma$ of the optimization problem

(4.1) \begin{equation}\max_{\delta\in\Gamma}\biggl\{\kappa(S_0+\delta_T)^2-\dfrac{1}{2\alpha\sigma^2}\int_{0}^T(\dot{\delta}_t-\mu)^2 \,{\textrm{d}} t+\dfrac{1}{2\Lambda}\biggl(\dfrac{1}{T}\biggl(\Phi_0\Lambda-\int_{0}^T\delta_t \,{\textrm{d}} t\biggr)^2-\int_{0}^T \delta^2_t \,{\textrm{d}} t\biggr)\biggr\}\end{equation}

is unique and satisfies

(4.2) \begin{equation}\dfrac{1}{T}\int_{0}^T\hat\delta_t \,{\textrm{d}} t=\dfrac{\big(2\kappa S_0+{{\mu}/{\big(\alpha\sigma^2\big)}}\big)\tanh\!\big(\sqrt{\rho} T/2\big)-\big(\!\coth\!\big(\sqrt\rho T\big)-2\Lambda\sqrt\rho\kappa\big)\Phi_0}{\frac{1}{\sqrt{\rho}\Lambda}-4 \kappa \tanh\!\big(\sqrt{\rho} T/2\big)}+\dfrac{\Phi_0\Lambda}{T}.\end{equation}

Proof. The proof will be done in two steps. First we will solve the optimization problem (4.1) for the case where $\delta_T$ and $\int_{0}^T\delta_t \,{\textrm{d}} t$ are given. Then we will find the optimal $\delta_T$ and $\int_{0}^T\delta_t \,{\textrm{d}} t$ .

Thus, for any x, y, let $\Gamma_{x,y}\subset \Gamma$ be the set of all functions $\delta\in\Gamma$ that satisfy $\delta_T=x$ and $\int_{0}^T\delta_t \,{\textrm{d}} t=y$ . Consider the minimization problem

$$\min_{\delta\in \Gamma_{x,y}} \int_{0}^T H(\dot \delta_t,\delta_t)\,{\textrm{d}} t,$$

where

$$H(u,v)\,:\!=\, \dfrac{1}{2\alpha\sigma^2}(u-\mu)^2+\dfrac{1}{2\Lambda} v^2\quad \text{for $u,v\in\mathbb{R}$.}$$

This optimization problem is convex, and thus it has a unique solution which has to satisfy the Euler–Lagrange equation (for details see [Reference Gelfand and Fomin13])

$$\dfrac{{\textrm{d}}}{{\textrm{d}} t}\dfrac{\partial H}{\partial \dot \delta_t}=\lambda+\dfrac{{\textrm{d}}}{{\textrm{d}} t}\dfrac{\partial H}{\partial \delta_t}$$

for some constant $\lambda>0$ (Lagrange multiplier due to the constraint $\int_{0}^T \delta_t \,{\textrm{d}} t=y$ ). Thus the optimizer solves the ODE $\ddot{\delta}_t-\rho \delta\equiv \operatorname{const.}$ (recall the risk–liquidity ratio $\rho={{\alpha\sigma^2}/{\Lambda}}$ ). From the standard theory it follows that

(4.3) \begin{equation}\delta_t=c_1\sinh\!\big(\sqrt\rho t\big)+c_2\sinh\!\big(\sqrt\rho(T-t)\big)+c_3\end{equation}

for some constants $c_1,c_2,c_3$ . From the three constraints $\delta_0=0$ , $\delta_T=x$ , and $\int_{0}^T \delta_t \,{\textrm{d}} t=y$ we obtain

(4.4) \begin{equation} c_1=\dfrac{x-c_3}{\sinh\!\big(\sqrt\rho T\big)}, \quad c_2=-\dfrac{c_3}{\sinh\!\big(\sqrt\rho T\big)}, \quad c_3=\dfrac{\sqrt\rho y-x\tanh\!\big(\sqrt\rho T/2\big)}{\sqrt\rho T-2\tanh\!\big(\sqrt\rho T/2\big)}.\end{equation}

We argue that

(4.5) \begin{align} &\rho\int_{0}^T \delta^2_t \,{\textrm{d}} t+\int_{0}^T \dot{\delta}^2_t\,{\textrm{d}} t \notag \\ &\quad =\rho\int_{0}^T ((\delta_t-c_3)+c_3)^2 \,{\textrm{d}} t+\int_{0}^T \dot{\delta}^2_t\,{\textrm{d}} t\notag \\ &\quad =\dfrac{\sqrt\rho}{2}\bigl(c^2_1+c^2_2\bigr)\sinh\!\big(2\sqrt\rho T\big)-2c_1c_2\sqrt\rho\sinh\!\big(\sqrt\rho T\big)-\rho c^2_3 T+2\rho c_3 y\notag \\ &\quad =\sqrt{\rho}x^2\coth\!\big(\sqrt\rho T\big)+2\sqrt\rho c_1 c_2\sinh\!\big(\sqrt\rho T\big)\big(\cosh\big(\sqrt\rho T\big)-1\big)-\rho c^2_3 T+2\rho c_3 y\notag \\ &\quad =\sqrt{\rho}x^2\coth\!\big(\sqrt\rho T\big)+\big(2\sqrt\rho \tanh\!\big(\sqrt \rho T/2\big)-\rho T\big)c^2_3 +2\big(\rho y-\sqrt\rho \tanh\!\big(\sqrt \rho T/2\big)x\big)c_3\notag \\ &\quad =\sqrt{\rho}\biggl(x^2\coth\!\big(\sqrt\rho T\big)+\dfrac{\big(x\tanh\!\big(\sqrt\rho T/2\big)-\sqrt\rho y\big)^2}{\sqrt\rho T-2\tanh\!\big(\sqrt\rho T/2\big)}\biggr).\end{align}

Indeed, the first equality is obvious. The second equality follows from (4.3) and simple computations. The third equality is due to

$$c_1-c_2=\frac{x}{\sinh\!\big(\sqrt\rho T\big)}.$$

The fourth equality is due to

$$c_1c_2=\dfrac{c^2_3-xc_3}{\sinh^2\!\big(\sqrt\rho T\big)}.$$

The last equality follows from substituting $c_3$ .

By combining (4.5) and the simple equality

$$\dfrac{1}{2\alpha\sigma^2}\int_{0}^T (\dot \delta_t-\mu)^2 \,{\textrm{d}} t +\dfrac{1}{2\Lambda}\int_{0}^T \dot \delta_t^2 \,{\textrm{d}} t=\dfrac{\mu^2 T}{2\alpha\sigma^2}-\dfrac{\mu x}{\alpha\sigma^2}+\dfrac{1}{2\alpha\sigma^2}\biggl(\rho\int_{0}^T \delta^2_t \,{\textrm{d}} t+\int_{0}^T \dot{\delta}^2_t\,{\textrm{d}} t\biggr),$$

we obtain

(4.6) \begin{align}&\min_{\delta\in \Gamma_{x,y}} \int_{0}^T H(\dot \delta_t,\delta_t)\,{\textrm{d}} t\notag \\&\quad =\dfrac{\mu^2 T}{2\alpha\sigma^2}-\dfrac{\mu x}{\alpha\sigma^2}+\dfrac{1}{2\Lambda\sqrt\rho}\biggl(x^2\coth\!\big(\sqrt\rho T\big)+\dfrac{\big(x\tanh\!\big(\sqrt\rho T/2\big)-\sqrt\rho y\big)^2}{\sqrt\rho T-2\tanh\!\big(\sqrt\rho T/2\big)}\biggr).\end{align}

We arrive at the final step of the proof. In view of (4.6), the optimization problem (4.1) is reduced to finding $x\,:\!=\, \delta_T$ and $y\,:\!=\, \int_{0}^T\delta_t \,{\textrm{d}} t$ , which maximize the quadratic form

$$A x^2+B y^2+2C xy + \eta x+\theta y,$$

where

\begin{align*}A&\,:\!=\, \kappa-\dfrac{1}{2\Lambda\sqrt\rho}\biggl(\!\coth\!\big(\sqrt\rho T\big)+\dfrac{\tanh^2\big(\sqrt\rho T/2\big)}{\sqrt\rho T-2 \tanh\!\big(\sqrt\rho T/2\big)}\biggr)\\&=-\dfrac{\sqrt\rho T\coth\!\big(\sqrt\rho T\big)+4\Lambda\sqrt\rho\kappa \tanh\!\big(\sqrt\rho T/2\big)-1-2\Lambda\rho T\kappa}{{2\Lambda\sqrt\rho\big(\sqrt\rho T-2 \tanh\!\big(\sqrt\rho T/2\big)\big)}},\\B&\,:\!=\, \dfrac{1}{2\Lambda T}-\dfrac{\sqrt\rho}{2\Lambda\big(\sqrt\rho T-2 \tanh\!\big(\sqrt\rho T/2\big)\big)}=-\dfrac{\tanh\!\big(\sqrt\rho T/2\big)}{\Lambda T \big(\sqrt\rho T-2 \tanh\!\big(\sqrt\rho T/2\big)\big)},\\C&\,:\!=\, \dfrac{\tanh\!\big(\sqrt\rho T/2\big)}{2\Lambda\big(\sqrt\rho T-2 \tanh\!\big(\sqrt\rho T/2\big)\big)}, \quad \eta\,:\!=\, 2\kappa S_0+\dfrac{\mu}{\alpha\sigma^2} \quad \text{and} \quad \theta\,:\!=\, -\dfrac{\Phi_0}{T}.\end{align*}

Simple computations give

\begin{align*}AB-C^2&=-\dfrac{\kappa\tanh\!\big(\sqrt\rho T/2\big)}{\Lambda T\big(\sqrt\rho T-2 \tanh\!\big(\sqrt\rho T/2\big)\big)}\\&\quad +\dfrac{\coth\!\big(\sqrt\rho T\big)\tanh\!\big(\sqrt\rho T/2\big)}{2\sqrt\rho \Lambda^2 T \big(\sqrt\rho T-2 \tanh\!\big(\sqrt\rho T/2\big)\big)}-\dfrac{\tanh^2\big(\sqrt\rho T/2\big)}{4\sqrt\rho \Lambda^2 T \big(\sqrt\rho T-2 \tanh\!\big(\sqrt\rho T/2\big)\big)}\\&=\dfrac{{{1}/{(4\sqrt\rho\Lambda)}}-\kappa\tanh\!\big(\sqrt\rho T/2\big)}{\Lambda T\big(\sqrt\rho T-2 \tanh\!\big(\sqrt\rho T/2\big)\big)}.\end{align*}

From the inequality $z>\tanh\!(z)z$ , $z>0$ and the assumption $\kappa\in (0,{{1}/{(2\alpha\sigma^2 T)}})$ , we obtain $B<0$ and $AB-C^2>0$ . Thus the above quadratic form has a unique maximizer

$$(\bar x,\bar y)\,:\!=\, \dfrac{1}{2(AB-C^2)}(C\theta-B\eta,C\eta-A\theta).$$

We conclude that the optimization problem (4.1) has a unique solution which is given by (4.3)–(4.4) for $(x,y)\,:\!=\, (\bar x,\bar y)$ . Moreover, direct computations yield

$$\dfrac{\bar y}{T}=\dfrac{\big(2\kappa S_0+{{\mu}/{\big(\alpha\sigma^2\big)}}\big)\tanh\!\big(\sqrt{\rho} T/2\big)- \big(\!\coth\!\big(\sqrt\rho T\big)-2\Lambda\sqrt\rho\kappa\big)\Phi_0}{\dfrac{1}{\sqrt{\rho}\Lambda}-4 \kappa \tanh\!\big(\sqrt{\rho} T/2\big)}+\dfrac{\Phi_0\Lambda}{T},$$

and (4.2) follows.

Funding information

Supported in part by GIF grant 1489-304.6/2019 and ISF grant 230/21.

Competing interests

There were no competing interests to declare which arose during the preparation or publication process of this article.

References

Almgren, R. and Chriss, N. (2001). Optimal execution of portfolio transactions. J. Risk 3, 539.CrossRefGoogle Scholar
Bank, P. and Voß, M. (2019). Optimal investment with transient price impact. SIAM J. Financial Math. 10, 723768.CrossRefGoogle Scholar
Bank, P., Dolinsky, Y. and Rásonyi, M. (2022). What if we knew what the future brings? Optimal investment for a frontrunner with price impact. Appl. Math. Optimization 86, 25.CrossRefGoogle Scholar
Bayrakatar, E. and Ludkovski, M. (2014). Liquidation in limit order books with controlled intensity. Math. Finance 24, 627650.CrossRefGoogle Scholar
Black, F. (1986). Noise. J. Finance 41, 529543.CrossRefGoogle Scholar
Delbaen, F. and Schachermayer, W. (1999). A compactness principle for bounded sequences of martingales with applications. In Proceedings of the Seminar of Stochastic Analysis, Random Fields and Applications (Progress in Probability 45), pp. 137–173. Birkhäuser.CrossRefGoogle Scholar
Delbaen, F., Grandits, P., Rheinländer, T., Samperi, D., Schweizer, M. and Stricker, C. (2002). Exponential hedging and entropic penalties. Math. Finance 12, 99123.CrossRefGoogle Scholar
Dolinskyi, L. and Dolinsky, Y. (2023). Optimal liquidation with high risk aversion in the Almgren–Chriss model: a case study. Available at arXiv:2301.01555.Google Scholar
Ekren, I. and Nadtochiy, S. (2022). Utility-based pricing and hedging of contingent claims in Almgren–Chriss model with temporary price impact. Math. Finance 32, 172225.CrossRefGoogle Scholar
Fritelli, M. (2000). The minimal entropy martingale measure and the valuation problem in incomplete markets. Math. Finance 10, 3952.CrossRefGoogle Scholar
Fruth, A., Schöneborn, T. and Urusov, M. (2019). Optimal trade execution in order books with stochastic liquidity. Math. Finance 29, 507541.CrossRefGoogle Scholar
Gatheral, J. and Schied, A. (2011). Optimal trade execution under geometric Brownian motion in the Almgren and Chriss framework. Internat. J. Theoret. Appl. Finance 14, 353368.CrossRefGoogle Scholar
Gelfand, I. M. and Fomin, S. V. (1963). Calculus of Variations. Prentice Hall.Google Scholar
Guasoni, P. and Rásonyi, M. (2015). Hedging, arbitrage and optimality with superlinear frictions. Ann. Appl. Prob. 25, 20662095.CrossRefGoogle Scholar
Schied, A., Schöneborn, T. and Tehranchi, M. (2009). Optimal basket liquidation for CARA investors is deterministic. Appl. Math. Finance 17, 471489.CrossRefGoogle Scholar
Sion, M. (1958). On general minimax theorems. Pacific J. Math. 8, 171176.CrossRefGoogle Scholar