Nonconvex Matrix Completion with Linearly Parameterized Factors
Abstract
Techniques of matrix completion aim to impute a large portion of missing entries in a data matrix through a small portion of observed ones. In practice, prior information and special structures are usually employed in order to improve the accuracy of matrix completion. In this paper, we propose a unified nonconvex optimization framework for matrix completion with linearly parameterized factors. In particular, by introducing a condition referred to as Correlated Parametric Factorization, we conduct a unified geometric analysis for the nonconvex objective by establishing uniform upper bounds for low-rank estimation resulting from any local minimizer. Perhaps surprisingly, the condition of Correlated Parametric Factorization holds for important examples including subspace-constrained matrix completion and skew-symmetric matrix completion. The effectiveness of our unified nonconvex optimization method is also empirically illustrated by extensive numerical simulations.
Cite
Text
Chen et al. "Nonconvex Matrix Completion with Linearly Parameterized Factors." Journal of Machine Learning Research, 2022.Markdown
[Chen et al. "Nonconvex Matrix Completion with Linearly Parameterized Factors." Journal of Machine Learning Research, 2022.](https://mlanthology.org/jmlr/2022/chen2022jmlr-nonconvex/)BibTeX
@article{chen2022jmlr-nonconvex,
title = {{Nonconvex Matrix Completion with Linearly Parameterized Factors}},
author = {Chen, Ji and Li, Xiaodong and Ma, Zongming},
journal = {Journal of Machine Learning Research},
year = {2022},
pages = {1-35},
volume = {23},
url = {https://mlanthology.org/jmlr/2022/chen2022jmlr-nonconvex/}
}