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Implicit Regularization of Random Feature Models

Arthur Jacot, Berfin Şimşek, Francesco Spadaro, Clément Hongler, Franck Gabriel

19/2/20 Published in : arXiv:2002.08404

Random Feature (RF) models are used as efficient parametric approximations of kernel methods. We investigate, by means of random matrix theory, the connection between Gaussian RF models and Kernel Ridge Regression (KRR). For a Gaussian RF model with P features, N data points, and a ridge \lambda, we show that the average (i.e. expected) RF predictor is close to a KRR predictor with an effective ridge \tilde{\lambda}. We show that \tilde{\lambda} > \lambda and \tilde{\lambda} \searrow \lambda monotonically as P grows, thus revealing the implicit regularization effect of finite RF sampling. We then compare the risk (i.e. test error) of the \tilde{\lambda}-KRR predictor with the average risk of the \lambda-RF predictor and obtain a precise and explicit bound on their difference. Finally, we empirically find an extremely good agreement between the test errors of the average \lambda-RF predictor and \tilde{\lambda}-KRR predictor.

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Quantum teleportation of single-electron states

An Enumerative Approach to P=W

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