聚类分析
张量(固有定义)
数学
秩(图论)
子空间拓扑
成对比较
规范(哲学)
解算器
矩阵范数
数学优化
应用数学
算法
组合数学
数学分析
纯数学
统计
法学
物理
特征向量
量子力学
政治学
作者
Yongyong Chen,Shuqin Wang,Chong Peng,Zhongyun Hua,Yicong Zhou
标识
DOI:10.1109/tip.2021.3068646
摘要
The low-rank tensor representation (LRTR) has become an emerging research direction to boost the multi-view clustering performance. This is because LRTR utilizes not only the pairwise relation between data points, but also the view relation of multiple views. However, there is one significant challenge: LRTR uses the tensor nuclear norm as the convex approximation but provides a biased estimation of the tensor rank function. To address this limitation, we propose the generalized nonconvex low-rank tensor approximation (GNLTA) for multi-view subspace clustering. Instead of the pairwise correlation, GNLTA adopts the low-rank tensor approximation to capture the high-order correlation among multiple views and proposes the generalized nonconvex low-rank tensor norm to well consider the physical meanings of different singular values. We develop a unified solver to solve the GNLTA model and prove that under mild conditions, any accumulation point is a stationary point of GNLTA. Extensive experiments on seven commonly used benchmark databases have demonstrated that the proposed GNLTA achieves better clustering performance over state-of-the-art methods.
科研通智能强力驱动
Strongly Powered by AbleSci AI