The smallest eigenvalue distribution in the real Wishart-Laguerre ensemble with even topology

We consider rectangular random matrices of size belonging to the real Wishart-Laguerre ensemble also known as the chiral Gaussian orthogonal ensemble. This ensemble appears in many applications like QCD, mesoscopic physics, and time series analysis. We are particularly interested in the distribution...

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Published inJournal of physics. A, Mathematical and theoretical Vol. 48; no. 24; pp. 245202 - 29
Main Authors Wirtz, T, Akemann, G, Guhr, T, Kieburg, M, Wegner, R
Format Journal Article
LanguageEnglish
Published IOP Publishing 19.06.2015
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Summary:We consider rectangular random matrices of size belonging to the real Wishart-Laguerre ensemble also known as the chiral Gaussian orthogonal ensemble. This ensemble appears in many applications like QCD, mesoscopic physics, and time series analysis. We are particularly interested in the distribution of the smallest non-zero eigenvalue and the gap probability to find no eigenvalue in an interval . While for odd topology explicit closed results are known for finite and infinite matrix size, for even only recursive expressions in p are available. The smallest eigenvalue distribution as well as the gap probability for general even is equivalent to expectation values of characteristic polynomials raised to a half-integer power. The computation of such averages is done via a combination of skew-orthogonal polynomials and bosonisation methods. The results are given in terms of Pfaffian determinants both at finite p and in the hard edge scaling limit ( and fixed) for an arbitrary even topology . Numerical simulations for the correlated Wishart ensemble illustrate the universality of our results in this particular limit. These simulations point to a validity of the hard edge scaling limit beyond the invariant case.
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ISSN:1751-8113
1751-8121
DOI:10.1088/1751-8113/48/24/245202