18
4

High dimensional regression and matrix estimation without tuning parameters

Abstract

A general theory for Gaussian mean estimation that automatically adapts to unknown sparsity under arbitrary norms is proposed. The theory is applied to produce adaptively minimax rate-optimal estimators in high dimensional regression and matrix estimation that involve no tuning parameters.

View on arXiv
Comments on this paper