Methods for Sparse and Low-Rank Recovery under Simplex Constraints
Ping Li, Syama Sundar Rangapuram, Martin Slawski

TL;DR
This paper explores effective methods for sparse and low-rank recovery under simplex constraints, proposing novel regularization techniques and demonstrating their advantages through various numerical experiments.
Contribution
It introduces a new non-convex regularization scheme based on the inverse squared ll_2-norm, improving sparse and low-rank recovery under simplex constraints.
Findings
ERM with sparsification outperforms -regularization.
Convex regularizers under simplex constraints are impossible.
Numerical studies validate the proposed methods across applications.
Abstract
The de-facto standard approach of promoting sparsity by means of -regularization becomes ineffective in the presence of simplex constraints, i.e.,~the target is known to have non-negative entries summing up to a given constant. The situation is analogous for the use of nuclear norm regularization for low-rank recovery of Hermitian positive semidefinite matrices with given trace. In the present paper, we discuss several strategies to deal with this situation, from simple to more complex. As a starting point, we consider empirical risk minimization (ERM). It follows from existing theory that ERM enjoys better theoretical properties w.r.t.~prediction and -estimation error than -regularization. In light of this, we argue that ERM combined with a subsequent sparsification step like thresholding is superior to the heuristic of using -regularization after…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Distributed Sensor Networks and Detection Algorithms · Photoacoustic and Ultrasonic Imaging
