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Local Central Limit Theorem for Determinantal Point Processes

Abstract

We prove a local central limit theorem (LCLT) for the number of points N(J)N(J) in a region JJ in Rd\mathbb R^d specified by a determinantal point process with an Hermitian kernel. The only assumption is that the variance of N(J)N(J) tends to infinity as J|J| \to \infty. This extends a previous result giving a weaker central limit theorem (CLT) for these systems. Our result relies on the fact that the Lee-Yang zeros of the generating function for {E(k;J)}\{E(k;J)\} --- the probabilities of there being exactly kk points in JJ --- all lie on the negative real zz-axis. In particular, the result applies to the scaled bulk eigenvalue distribution for the Gaussian Unitary Ensemble (GUE) and that of the Ginibre ensemble. For the GUE we can also treat the properly scaled edge eigenvalue distribution. Using identities between gap probabilities, the LCLT can be extended to bulk eigenvalues of the Gaussian Symplectic Ensemble (GSE). A LCLT is also established for the probability density function of the kk-th largest eigenvalue at the soft edge, and of the spacing between kk-th neigbors in the bulk.Comment: 12 pages; claims relating to LCLT for Pfaffian point processes of version 1 withdrawn in version 2 and replaced by determinantal point processes; improved presentation version

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