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Abstract
We
consider a general matrix model
$\bold{\Omega}=(\bbZ\bbU_2\bbU_2^T\bbZ^T)^{-1}\bbZ\bbU_1\bbU_1^T\bbZ^T$, where
$\bbU_1$ and $\bbU_2$ are two orthogonal isometries and $\bbZ$ is the matrix of
observed data. We establish the asymptotic Tracy-Widom distribution for the
largest eigenvalue of $\Omega$ under moment assumptions on the data $\bbZ$. This result has wide applications in
practice. For example, by appropriately
choosing $\bbU_1$ and $\bbU_2$, our results can be used in deriving the
asymptotic distribution of the maximum eigenvalues of the matrices used in
canonical correlation analysis (CCA) and of F matrices (including centered and
non-centered versions). Moreover, via
appropriate matrices $\bbU_1$ and $\bbU_2$, our result on $\bold{\bbom}$ can be
applied to some multivariate testing problems that cannot be done by both types
of matrices. To see this, we consider
two specific examples. One is in the multivariate analysis of variance (MANOVA)
approach for testing the equivalence of several high-dimensional mean vectors, where
$\bbU_1$ and $\bbU_2$ are chosen to be two nonrandom matrices. The other one is in the multivariate linear
model for testing the unknown parameter matrix, where $\bbU_1$ and $\bbU_2$ are
random. Extensive simulation studies
strongly support the theoretical results. |