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arXiv:0910.0775 [cond-mat.stat-mech]AbstractReferencesReviewsResources

The Index Distribution of Gaussian Random Matrices

Satya N. Majumdar, Celine Nadal, Antonello Scardicchio, Pierpaolo Vivo

Published 2009-10-05Version 1

We compute analytically, for large N, the probability distribution of the number of positive eigenvalues (the index N_{+}) of a random NxN matrix belonging to Gaussian orthogonal (\beta=1), unitary (\beta=2) or symplectic (\beta=4) ensembles. The distribution of the fraction of positive eigenvalues c=N_{+}/N scales, for large N, as Prob(c,N)\simeq\exp[-\beta N^2 \Phi(c)] where the rate function \Phi(c), symmetric around c=1/2 and universal (independent of $\beta$), is calculated exactly. The distribution has non-Gaussian tails, but even near its peak at c=1/2 it is not strictly Gaussian due to an unusual logarithmic singularity in the rate function.

Comments: 4 pages Revtex, 4 .eps figures included
Journal: Phys. Rev. Lett. 103, 220603 (2009)
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