Bioinformatics Center, Institute for Chemical Research, Kyoto University, Uji, Kyoto 611-0011, Japan
Graduate School of Informatics, Kyoto University, Yoshida-honmachi, Sakyo-ku, Kyoto 606-8501, Japan; RIKEN, Center for Advanced Intelligence Project, Tokyo 103-0027, Japan; Institute of Statistical Mathematics, Tokyo 190-8562, Japan; and PRESTO, Japan Science and Technological Agency, Japan
Neural Comput. 2020 Feb;32(2):447-484. doi: 10.1162/neco_a_01254. Epub 2019 Dec 13.
Recently, a set of tensor norms known as has been proposed as a convex solution to coupled tensor completion. Coupled norms have been designed by combining low-rank inducing tensor norms with the matrix trace norm. Though coupled norms have shown good performances, they have two major limitations: they do not have a method to control the regularization of coupled modes and uncoupled modes, and they are not optimal for couplings among higher-order tensors. In this letter, we propose a method that scales the regularization of coupled components against uncoupled components to properly induce the low-rankness on the coupled mode. We also propose coupled norms for higher-order tensors by combining the square norm to coupled norms. Using the excess risk-bound analysis, we demonstrate that our proposed methods lead to lower risk bounds compared to existing coupled norms. We demonstrate the robustness of our methods through simulation and real-data experiments.
最近,人们提出了一组张量范数,称为 ,作为耦合张量完成的凸解。耦合范数是通过将低秩诱导张量范数与矩阵迹范数相结合而设计的。尽管耦合范数表现出了良好的性能,但它们有两个主要的局限性:它们没有一种方法来控制耦合模式和非耦合模式的正则化,并且它们对于高阶张量之间的耦合不是最优的。在这封信中,我们提出了一种方法,将耦合分量的正则化与非耦合分量的正则化相平衡,以在耦合模式上适当地诱导低秩性。我们还通过结合平方范数来提出用于高阶张量的耦合范数。通过超额风险界分析,我们证明与现有耦合范数相比,我们提出的方法可以得到更低的风险界。我们通过仿真和实际数据实验证明了我们方法的稳健性。