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Fundamental Barriers to High-Dimensional Regression with Convex Penalties

Abstract

In high-dimensional regression, we attempt to estimate a parameter vector β0Rp\beta_0\in\mathbb{R}^p from npn\lesssim p observations {(yi,xi)}in\{(y_i,x_i)\}_{i\leq n} where xiRpx_i\in\mathbb{R}^p is a vector of predictors and yiy_i is a response variable. A well-established approach uses convex regularizers to promote specific structures (e.g. sparsity) of the estimate β^\widehat{\beta}, while allowing for practical algorithms. Theoretical analysis implies that convex penalization schemes have nearly optimal estimation properties in certain settings. However, in general the gaps between statistically optimal estimation (with unbounded computational resources) and convex methods are poorly understood. We show that when the statistican has very simple structural information about the distribution of the entries of β0\beta_0, a large gap frequently exists between the best performance achieved by any convex regularizer satisfying a mild technical condition and either (i) the optimal statistical error or (ii) the statistical error achieved by optimal approximate message passing algorithms. Remarkably, a gap occurs at high enough signal-to-noise ratio if and only if the distribution of the coordinates of β0\beta_0 is not log-concave. These conclusions follow from an analysis of standard Gaussian designs. Our lower bounds are expected to be generally tight, and we prove tightness under certain conditions.

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