Unsupervised learning low-rank tensor from incomplete and grossly corrupted data

被引:0
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作者
Zhijun Meng
Yaoming Zhou
Yongjia Zhao
机构
[1] Beihang University,School of Aeronautic Science and Engineering
[2] Beihang University,School of Automation Science and Electrical Engineering
[3] The State Key Laboratory of Virtual Reality Technology and Systems,undefined
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关键词
Unsupervised learning; Low-rank tensor; Tensor recovery; Convex optimization; Alternating direction augmented Lagrangian (ADAL);
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学科分类号
摘要
Low-rank tensor completion and recovery have received considerable attention in the recent literature. The existing algorithms, however, are prone to suffer a failure when the multiway data are simultaneously contaminated by arbitrary outliers and missing values. In this paper, we study the unsupervised tensor learning problem, in which a low-rank tensor is recovered from an incomplete and grossly corrupted multidimensional array. We introduce a unified framework for this problem by using a simple equation to replace the linear projection operator constraint, and further reformulate it as two convex optimization problems through different approximations of the tensor rank. Two globally convergent algorithms, derived from the alternating direction augmented Lagrangian (ADAL) and linearized proximal ADAL methods, respectively, are proposed for solving these problems. Experimental results on synthetic and real-world data validate the effectiveness and superiority of our methods.
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页码:8327 / 8335
页数:8
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