Let $x_1,...,x_n\in\mathbb{R}^p$ be i.i.d. random vectors with mean 0 and covariance $\Sigma_p$. Let $S_{n,p}=\sum_{i=1}^nx_ix_i^T/n$ be the sample covariance. We consider the asymptotics of the empirical distribution of eigenvalues of $S_{n,p}$. We let $p/n\to c\in(0,1)$ where $c$ is a constant.
It is well-known that when $\Sigma_p$ is identity, the limiting distribution of the spectrum of $S_{n,p}$ follows the Marchenko-Pastur distribution
What about for general $\Sigma_p$? What kind of asymptotic regime do we need on $\Sigma_p$ in order to have a meaningful limiting distribution of the spectrum of $S_{n,p}$?
For example, we can assume the empirical distribution of eigenvalues of $\Sigma_p$ converges to a deterministic measure $\mu$. Is this condition enough? I suppose this is not enough and the eigenvectors of $\Sigma_p$ also seems matter. If this is indeed enough, what is the relationship between $\mu$ and the limiting spectrum distribution of $S_{n,p}$?