MLLGSTSep 13, 2016

Noisy Inductive Matrix Completion Under Sparse Factor Models

arXiv:1609.03958v110 citations
Originality Synthesis-oriented
AI Analysis

This work addresses matrix completion problems with features and sparsity for applications like recommendation systems, but it is incremental as it builds on existing theorems.

The paper tackles noisy inductive matrix completion under sparse factor models by extending prior theoretical results to provide error bounds for sparsity-regularized maximum likelihood estimators, specifically deriving bounds for Gaussian noise in terms of squared loss.

Inductive Matrix Completion (IMC) is an important class of matrix completion problems that allows direct inclusion of available features to enhance estimation capabilities. These models have found applications in personalized recommendation systems, multilabel learning, dictionary learning, etc. This paper examines a general class of noisy matrix completion tasks where the underlying matrix is following an IMC model i.e., it is formed by a mixing matrix (a priori unknown) sandwiched between two known feature matrices. The mixing matrix here is assumed to be well approximated by the product of two sparse matrices---referred here to as "sparse factor models." We leverage the main theorem of Soni:2016:NMC and extend it to provide theoretical error bounds for the sparsity-regularized maximum likelihood estimators for the class of problems discussed in this paper. The main result is general in the sense that it can be used to derive error bounds for various noise models. In this paper, we instantiate our main result for the case of Gaussian noise and provide corresponding error bounds in terms of squared loss.

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