作者
Yuxin Chen, Yuejie Chi, Jianqing Fan, Cong Ma, Yuling Yan
发表日期
2020
期刊
SIAM Journal on Optimization
卷号
30
期号
4
页码范围
3098-3121
出版商
Society for Industrial and Applied Mathematics
简介
This paper studies noisy low-rank matrix completion: given partial and noisy entries of a large low-rank matrix, the goal is to estimate the underlying matrix faithfully and efficiently. Arguably one of the most popular paradigms to tackle this problem is convex relaxation, which achieves remarkable efficacy in practice. However, the theoretical support of this approach is still far from optimal in the noisy setting, falling short of explaining its empirical success. We make progress towards demystifying the practical efficacy of convex relaxation vis-à-vis random noise. When the rank and the condition number of the unknown matrix are bounded by a constant, we demonstrate that the convex programming approach achieves near-optimal estimation errors---in terms of the Euclidean loss, the entrywise loss, and the spectral norm loss---for a wide range of noise levels. All of this is enabled by bridging convex relaxation with the …
引用总数
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