Tracy-Widom law for the extreme eigenvalues of sample correlation matrices

Abstract

Let the sample correlation matrix be W=YYT, where Y=(yij)p,n with yij=xij/Σj=1nxij2. We assume \xij: 1≤ i≤ p, 1≤ j≤ n\ to be a collection of independent symmetric distributed random variables with sub-exponential tails. Moreover, for any i, we assume xij, 1≤ j≤ n to be identically distributed. We assume 0<p<n and p/n→ y with some y∈(0,1) as p,n→∞. In this paper, we provide the Tracy-Widom law (TW1) for both the largest and smallest eigenvalues of W. If xij are i.i.d. standard normal, we can derive the TW1 for both the largest and smallest eigenvalues of the matrix R=RRT, where R=(rij)p,n with rij=(xij- xi)/Σj=1n(xij- xi)2, xi=n-1Σj=1nxij.

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