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A necessary and sufficient condition for convergence of the zeros of random polynomials (1901.07614v3)

Published 22 Jan 2019 in math.PR and math.CV

Abstract: Consider random polynomials of the form $G_n = \sum_{i=0}n \xi_i p_i$, where the $\xi_i$ are i.i.d.\ non-degenerate complex random variables, and ${p_i}$ is a sequence of orthonormal polynomials with respect to a regular measure $\tau$ supported on a compact set $K$. We show that the zero measure of $G_n$ converges weakly almost surely to the equilibrium measure of $K$ if and only if $\mathbb{E} \log(1 + |\xi_0|) < \infty$. This generalizes the corresponding result of Ibragimov and Zaporozhets in the case when $p_i(z) = zi$. We also show that the zero measure of $G_n$ converges weakly in probability to the equilibrium measure of $K$ if and only if $\mathbb{P} (|\xi_0| > en) = o(n{-1})$. Our proofs rely on results from small ball probability and exploit the structure of general orthogonal polynomials. Our methods also work for sequences of asymptotically minimal polynomials in $Lp(\tau)$, where $p \in (0, \infty]$. In particular, sequences of $Lp$-minimal polynomials and (normalized) Faber and Fekete polynomials fall into this class.

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