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Eigenvalue distribution of nonlinear models of random matrices

Abstract

This paper is concerned with the asymptotic empirical eigenvalue distribution of a non linear random matrix ensemble. More precisely we consider M=1mYYM= \frac{1}{m} YY^* with Y=f(WX)Y=f(WX) where WW and XX are random rectangular matrices with i.i.d. centered entries. The function ff is applied pointwise and can be seen as an activation function in (random) neural networks. We compute the asymptotic empirical distribution of this ensemble in the case where WW and XX have sub-Gaussian tails and ff is real analytic. This extends a previous result where the case of Gaussian matrices WW and XX is considered. We also investigate the same questions in the multi-layer case, regarding neural network applications.

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