Abstract
Abstract
We explore the limiting spectral distribution of large-dimensional random permutation matrices, assuming the underlying population distribution possesses a general dependence structure. Let
$\textbf X = (\textbf x_1,\ldots,\textbf x_n)$
$\in \mathbb{C} ^{m \times n}$
be an
$m \times n$
data matrix after self-normalization (n samples and m features), where
$\textbf x_j = (x_{1j}^{*},\ldots, x_{mj}^{*} )^{*}$
. Specifically, we generate a permutation matrix
$\textbf X_\pi$
by permuting the entries of
$\textbf x_j$
$(j=1,\ldots,n)$
and demonstrate that the empirical spectral distribution of
$\textbf {B}_n = ({m}/{n})\textbf{U} _{n} \textbf{X} _\pi \textbf{X} _\pi^{*} \textbf{U} _{n}^{*}$
weakly converges to the generalized Marčenko–Pastur distribution with probability 1, where
$\textbf{U} _n$
is a sequence of
$p \times m$
non-random complex matrices. The conditions we require are
$p/n \to c >0$
and
$m/n \to \gamma > 0$
.
Publisher
Cambridge University Press (CUP)