arXiv:0811.2290 [cond-mat.stat-mech]AbstractReferencesReviewsResources
Large Deviations of the Maximum Eigenvalue for Wishart and Gaussian Random Matrices
Satya N. Majumdar, Massimo Vergassola
Published 2008-11-14Version 1
We present a simple Coulomb gas method to calculate analytically the probability of rare events where the maximum eigenvalue of a random matrix is much larger than its typical value. The large deviation function that characterizes this probability is computed explicitly for Wishart and Gaussian ensembles. The method is quite general and applies to other related problems, e.g. the joint large deviation function for large fluctuations of top eigenvalues. Our results are relevant to widely employed data compression techniques, namely the principal components analysis. Analytical predictions are verified by extensive numerical simulations.
Comments: 4 pages, 3 .eps figures included
Journal: Phys.Rev.Lett.102:060601,2009
Categories: cond-mat.stat-mech, cond-mat.dis-nn
Keywords: gaussian random matrices, maximum eigenvalue, simple coulomb gas method, joint large deviation function, employed data compression techniques
Tags: journal article
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