On Tensor Completion via Nuclear Norm Minimization

被引:0
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作者
Ming Yuan
Cun-Hui Zhang
机构
[1] University of Wisconsin-Madison,Department of Statistics
[2] Rutgers University,Department of Statistics and Biostatistics
关键词
Concentration inequality; Convex optimization; Dual certificate; Matrix completion; Nuclear norm minimization; Subdifferential; Tensor completion; Tensor rank; Primary 90C25; Secondary 90C59; 15A52;
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中图分类号
学科分类号
摘要
Many problems can be formulated as recovering a low-rank tensor. Although an increasingly common task, tensor recovery remains a challenging problem because of the delicacy associated with the decomposition of higher-order tensors. To overcome these difficulties, existing approaches often proceed by unfolding tensors into matrices and then apply techniques for matrix completion. We show here that such matricization fails to exploit the tensor structure and may lead to suboptimal procedure. More specifically, we investigate a convex optimization approach to tensor completion by directly minimizing a tensor nuclear norm and prove that this leads to an improved sample size requirement. To establish our results, we develop a series of algebraic and probabilistic techniques such as characterization of subdifferential for tensor nuclear norm and concentration inequalities for tensor martingales, which may be of independent interests and could be useful in other tensor-related problems.
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页码:1031 / 1068
页数:37
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