Poisson Matrix Recovery and Completion
Abstract
We extend the theory of low-rank matrix recovery and completion to the case when Poisson observations for a linear combination or a subset of the entries of a matrix are available, which arises in various applications with count data. We consider the usual matrix recovery formulation through maximum likelihood with proper constraints on the matrix of size -by-, and establish theoretical upper and lower bounds on the recovery error. Our bounds for matrix completion are nearly optimal up to a factor on the order of . These bounds are obtained by combing techniques for compressed sensing for sparse vectors with Poisson noise and for analyzing low-rank matrices, as well as adapting the arguments used for one-bit matrix completion \cite{davenport20121} (although these two problems are different in nature) and the adaptation requires new techniques exploiting properties of the Poisson likelihood function and tackling the difficulties posed by the locally sub-Gaussian characteristic of the Poisson distribution. Our results highlight a few important distinctions of the Poisson case compared to the prior work including having to impose a minimum signal-to-noise requirement on each observed entry and a gap in the upper and lower bounds. We also develop a set of efficient iterative algorithms and demonstrate their good performance on synthetic examples and real data.
Cite
@article{arxiv.1504.05229,
title = {Poisson Matrix Recovery and Completion},
author = {Yang Cao and Yao Xie},
journal= {arXiv preprint arXiv:1504.05229},
year = {2016}
}
Comments
Submitted to IEEE Journal. Parts of the paper have appeared in GlobalSIP 2013, GlobalSIP 2014, and ISIT 2015. arXiv admin note: substantial text overlap with arXiv:1501.06243