资源论文First order expansion of convex regularized estimators

First order expansion of convex regularized estimators

2020-02-23 | |  41 |   36 |   0

Abstract

We consider first order expansions of convex penalized estimators in highdimensional regression problems with random designs. Our setting includes linear regression and logistic regression as special cases. For a given penalty function h and the corresponding penalized estimator 图片.png, we construct a quantity 图片.png, the first order expansion of 图片.png, such that the distance between 图片.png and 图片.png is an order of magnitude smaller than the estimation error 图片.png. In this sense, the first order expansion 图片.png can be thought of as a generalization of influence functions from the mathematical statistics literature to regularized estimators in high-dimensions. Such first order expansion implies that the risk of 图片.png is asymptotically the same as the risk of 图片.png which leads to a precise characterization of the MSE of 图片.png; this characterization takes a particularly simple form for isotropic design. Such first order expansion also leads to inference results based on 图片.png. We provide sufficient conditions for the existence of such first order expansion for three regularizers: the Lasso in its constrained form, the lasso in its penalized form, and the Group-Lasso. The results apply to general loss functions under some conditions and those conditions are satisfied for the squared loss in linear regression and for the logistic loss in the logistic model.

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