arXiv Analytics

Sign in

arXiv:1611.03819 [cs.LG]AbstractReferencesReviewsResources

Recovery Guarantee of Non-negative Matrix Factorization via Alternating Updates

Yuanzhi Li, Yingyu Liang, Andrej Risteski

Published 2016-11-11Version 1

Non-negative matrix factorization is a popular tool for decomposing data into feature and weight matrices under non-negativity constraints. It enjoys practical success but is poorly understood theoretically. This paper proposes an algorithm that alternates between decoding the weights and updating the features, and shows that assuming a generative model of the data, it provably recovers the ground-truth under fairly mild conditions. In particular, its only essential requirement on features is linear independence. Furthermore, the algorithm uses ReLU to exploit the non-negativity for decoding the weights, and thus can tolerate adversarial noise that can potentially be as large as the signal, and can tolerate unbiased noise much larger than the signal. The analysis relies on a carefully designed coupling between two potential functions, which we believe is of independent interest.

Comments: To appear in NIPS 2016. 8 pages of extended abstract; 48 pages in total
Categories: cs.LG, stat.ML
Related articles: Most relevant | Search more
arXiv:1507.02189 [cs.LG] (Published 2015-07-08)
Intersecting Faces: Non-negative Matrix Factorization With New Guarantees
arXiv:1808.01975 [cs.LG] (Published 2018-08-06)
A Survey on Surrogate Approaches to Non-negative Matrix Factorization
arXiv:2410.14838 [cs.LG] (Published 2024-10-18)
Rank Suggestion in Non-negative Matrix Factorization: Residual Sensitivity to Initial Conditions (RSIC)