4.3 Article

Matrix nearness problems with Bregman divergences

Journal

SIAM JOURNAL ON MATRIX ANALYSIS AND APPLICATIONS
Volume 29, Issue 4, Pages 1120-1146

Publisher

SIAM PUBLICATIONS
DOI: 10.1137/060649021

Keywords

matrix nearness problems; Bregman divergences; squared Euclidean distance; relative entropy; alternating projections

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This paper discusses a new class of matrix nearness problems that measure approximation error using a directed distance measure called a Bregman divergence. Bregman divergences offer an important generalization of the squared Frobenius norm and relative entropy, and they all share fundamental geometric properties. In addition, these divergences are intimately connected with exponential families of probability distributions. Therefore, it is natural to study matrix approximation problems with respect to Bregman divergences. This article proposes a framework for studying these problems, discusses some specific matrix nearness problems, and provides algorithms for solving them numerically. These algorithms apply to many classical and novel problems, and they admit a striking geometric interpretation.

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