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arxiv: 1711.07420 · v1 · pith:C47NKX6Fnew · submitted 2017-11-20 · 🧮 math.PR

Outliers in the spectrum for products of independent random matrices

classification 🧮 math.PR
keywords eigenvaluesmatrixperturbationsrandomboundedconsiderdistributionentries
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For fixed positive integers m, we consider the product of m independent n by n random matrices with iid entries as in the limit as n tends to infinity. Under suitable assumptions on the entries of each matrix, it is known that the limiting empirical distribution of the eigenvalues is described by the m-th power of the circular law. Moreover, this same limiting distribution continues to hold if each iid random matrix is additively perturbed by a bounded rank deterministic error. However, the bounded rank perturbations may create one or more outlier eigenvalues. We describe the asymptotic location of the outlier eigenvalues, which extends a result of Terence Tao for the case of a single iid matrix. Our methods also allow us to consider several other types of perturbations, including multiplicative perturbations.

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