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Surprises in High-Dimensional Ridgeless Least Squares Interpolation

Abstract

Interpolators -- estimators that achieve zero training error -- have attracted growing attention in machine learning, mainly because state-of-the art neural networks appear to be models of this type. In this paper, we study minimum 2\ell_2 norm ("ridgeless") interpolation in high-dimensional least squares regression. We consider two different models for the feature distribution: a linear model, where the feature vectors xiRpx_i \in {\mathbb R}^p are obtained by applying a linear transform to a vector of i.i.d. entries, xi=Σ1/2zix_i = \Sigma^{1/2} z_i (with ziRpz_i \in {\mathbb R}^p); and a nonlinear model, where the feature vectors are obtained by passing the input through a random one-layer neural network, xi=φ(Wzi)x_i = \varphi(W z_i) (with ziRdz_i \in {\mathbb R}^d, WRp×dW \in {\mathbb R}^{p \times d} a matrix of i.i.d. entries, and φ\varphi an activation function acting componentwise on WziW z_i). We recover -- in a precise quantitative way -- several phenomena that have been observed in large-scale neural networks and kernel machines, including the "double descent" behavior of the prediction risk, and the potential benefits of overparametrization.

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