Yang Yuning, Feng Yunlong, Suykens Johan A K
College of Mathematics and Information Science, Guangxi University, Nanning 530004, China.
Department of Mathematics and Statistics, The State University of New York at Albany, Albany, NY 12222, USA.
Entropy (Basel). 2018 Mar 6;20(3):171. doi: 10.3390/e20030171.
This paper studies the matrix completion problems when the entries are contaminated by non-Gaussian noise or outliers. The proposed approach employs a nonconvex loss function induced by the maximum correntropy criterion. With the help of this loss function, we develop a rank constrained, as well as a nuclear norm regularized model, which is resistant to non-Gaussian noise and outliers. However, its non-convexity also leads to certain difficulties. To tackle this problem, we use the simple iterative soft and hard thresholding strategies. We show that when extending to the general affine rank minimization problems, under proper conditions, certain recoverability results can be obtained for the proposed algorithms. Numerical experiments indicate the improved performance of our proposed approach.
本文研究了数据项受到非高斯噪声或离群值污染时的矩阵补全问题。所提出的方法采用了由最大相关熵准则诱导的非凸损失函数。借助该损失函数,我们开发了一个秩约束模型以及一个核范数正则化模型,它们对非高斯噪声和离群值具有抗性。然而,其非凸性也带来了一定的困难。为解决这个问题,我们使用了简单的迭代软阈值和硬阈值策略。我们表明,当扩展到一般仿射秩最小化问题时,在适当条件下,所提出的算法可以获得一定的可恢复性结果。数值实验表明了我们所提方法的性能提升。