矩阵完成
低秩近似
缩小
秩(图论)
基质(化学分析)
趋同(经济学)
数学优化
正多边形
数学
计算机科学
凸优化
算法
组合数学
纯数学
几何学
物理
量子力学
经济增长
张量(固有定义)
复合材料
经济
高斯分布
材料科学
作者
Prateek Jain,Praneeth Netrapalli,Sujay Sanghavi
出处
期刊:Cornell University - arXiv
日期:2012-12-03
被引量:19
摘要
Alternating minimization represents a widely applicable and empirically successful approach for finding low-rank matrices that best fit the given data. For example, for the problem of low-rank matrix completion, this method is believed to be one of the most accurate and efficient, and formed a major component of the winning entry in the Netflix Challenge.
In the alternating minimization approach, the low-rank target matrix is written in a bi-linear form, i.e. $X = UV^†$; the algorithm then alternates between finding the best $U$ and the best $V$. Typically, each alternating step in isolation is convex and tractable. However the overall problem becomes non-convex and there has been almost no theoretical understanding of when this approach yields a good result.
In this paper we present first theoretical analysis of the performance of alternating minimization for matrix completion, and the related problem of matrix sensing. For both these problems, celebrated recent results have shown that they become well-posed and tractable once certain (now standard) conditions are imposed on the problem. We show that alternating minimization also succeeds under similar conditions. Moreover, compared to existing results, our paper shows that alternating minimization guarantees faster (in particular, geometric) convergence to the true matrix, while allowing a simpler analysis.
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