双低秩表示与投影距离惩罚聚类

Zhiqiang Fu, Yao Zhao, Dongxia Chang, Xingxing Zhang, Yiming Wang
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引用次数: 9

摘要

本文提出了一种新颖、简单、鲁棒的聚类自表示方法,即带有投影距离惩罚的双低秩表示(DLRRPD)。利用学习到的最优投影表示,DLRRPD能够获得有效的相似图来捕获多子空间结构。除了全局低秩约束外,我们的DLRRPD还通过投影距离惩罚来利用局部几何结构,从而促进了更有利的图。此外,为了提高DLRRPD对噪声的鲁棒性,我们引入了拉普拉斯秩约束,进一步提高了学习图对聚类任务的判别能力。同时,采用Frobenius范数(而不是常用的核范数)来强制图具有更低复杂度的块对角线性。在合成的、真实的和有噪声的数据上进行了大量的实验,结果表明,所提出的方法比目前可用的替代方法高出1.0%~10.1%。
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Double low-rank representation with projection distance penalty for clustering
This paper presents a novel, simple yet robust self-representation method, i.e., Double Low-Rank Representation with Projection Distance penalty (DLRRPD) for clustering. With the learned optimal projected representations, DLRRPD is capable of obtaining an effective similarity graph to capture the multi-subspace structure. Besides the global low-rank constraint, the local geometrical structure is additionally exploited via a projection distance penalty in our DLRRPD, thus facilitating a more favorable graph. Moreover, to improve the robustness of DLRRPD to noises, we introduce a Laplacian rank constraint, which can further encourage the learned graph to be more discriminative for clustering tasks. Meanwhile, Frobenius norm (instead of the popularly used nuclear norm) is employed to enforce the graph to be more block-diagonal with lower complexity. Extensive experiments have been conducted on synthetic, real, and noisy data to show that the proposed method outperforms currently available alternatives by a margin of 1.0%~10.1%.
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