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Low Tucker rank tensor completion using a symmetric block coordinate descent method
Authors:Quan Yu  Xinzhen Zhang  Yannan Chen  Liqun Qi
Institution:1. School of Mathematics, Hunan University, Hunan, China;2. School of Mathematics, Tianjin University, Tianjin, China;3. School of Mathematical Sciences, South China Normal University, Guangzhou, China;4. Huawei Theory Research Lab, Hong Kong, China
Abstract:Low Tucker rank tensor completion has wide applications in science and engineering. Many existing approaches dealt with the Tucker rank by unfolding matrix rank. However, unfolding a tensor to a matrix would destroy the data's original multi-way structure, resulting in vital information loss and degraded performance. In this article, we establish a relationship between the Tucker ranks and the ranks of the factor matrices in Tucker decomposition. Then, we reformulate the low Tucker rank tensor completion problem as a multilinear low rank matrix completion problem. For the reformulated problem, a symmetric block coordinate descent method is customized. For each matrix rank minimization subproblem, the classical truncated nuclear norm minimization is adopted. Furthermore, temporal characteristics in image and video data are introduced to such a model, which benefits the performance of the method. Numerical simulations illustrate the efficiency of our proposed models and methods.
Keywords:block coordinate descent  sparsity  tensor completion  truncated nuclear norm  Tucker rank
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