In this paper, we will derive the universality of the largest eigenvalue of a class of large dimensional real or complex sample covariance matrices in the form of . Here is an random matrix with independent entries such that , . We say is a classical complex sample covariance matrix if there also exists . Moreover, on dimensions we assume that and as . For a class of highly general deterministic positive definite matrices , we show that the limiting behavior of the largest eigenvalue of is universal under some additional assumptions on the distribution of s via pursuing a Green function comparison strategy raised in \cite{EYY2012, EYY20122} by Erd\"{o}s, Yau and Yin for Wigner matrices and extended by Pillai and Yin \cite{PY2012} to sample covariance matrices in the null case (). Consequently, in the classical complex case, combing this universality property and the results known for Gaussian matrices derived by El Karoui in \cite{Karoui2007} (nonsingular case) and Onatski in \cite{Onatski2008} (singular case) we show that after appropriate normalization the largest eigenvalue of converges weakly to the type 2 Tracy-Widom distribution . Moreover, in the real case, we show that when is spiked with fixed number of sub-critical spikes, the type 1 Tracy-Widom distribution holds for the largest eigenvalue of , which extends a result of F\'{e}ral and P\'{e}ch\'{e} in \cite{FP2009} to the scenario of nondiagonal and more generally distributed .
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