This paper develops a new estimation method for
nonstationary vector autoregressions (VAR's) with
unknown mixtures of I(0), I(1), and
I(2) components. The method does not require
prior knowledge on the exact number and location of unit
roots in the system. It is, therefore, applicable for
VAR's with any mixture of I(0), I(1),
and I(2) variables, which may be cointegrated in
any form. The limit theory for the stationary component of
our estimator is still normal, thereby preserving the usual
VAR limit theory. Yet, the leading term of the nonstationary
component of the estimator has mixed normal limit distribution
and does not involve unit root distribution. Our method is an
extension of the FM-VAR procedure by Phillips (1995,
Econometrica 63, 1023–1078) and yields an estimator
that is optimal in the sense of Phillips (1991, Econometrica
59, 283–306). Moreover, we show for a certain class of
linear restrictions that the Wald tests based on the estimator
are asymptotically distributed as a weighted sum of independent
chi-square variates with weights between zero and one. For
such restrictions, the limit distribution of the standard Wald
test is nonstandard and nuisance parameter dependent. This has
a direct application for Granger-causality testing in nonstationary
VAR's.