Multi-view Subspace Clustering with Complex Noise Modeling

Xiangyu Lu, Lingzhi Zhu, Yuyang Sun
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Abstract

Multi-view data clustering often aims to utilize various representations or views of original data to improve the clustering performance compared to the single-view clustering approach. Most multi-view subspace clustering methods are proposed to construct the affinity matrix of each view individually and then implement with spectral clustering for multi-view data clustering. The multi-view low-rank sparse subspace clustering (MLRSSC) is an effective and popular clustering algorithm among multi-view subspace clustering. This method can explore the joint subspace representation through creating an affinity matrix integrated of all views of input data. In addition, the low-rank and sparsity constraints are introduced into this method to enhance the clustering results. However, the original MLRSSC uses the mean square error as the fidelity term while not consider the complex noise pollution in real situations. Therefore, we introduce a complex noise modeling approach, i.e., independent and piecewise identically distributed (IPID) noise model, for MLRSSC to improve its performance. The related experimental results confirm that this proposed algorithm surpasses many state-of-the-art subspace clustering methods on several real-world datasets.
基于复杂噪声建模的多视图子空间聚类
与单视图聚类方法相比,多视图数据聚类通常旨在利用原始数据的各种表示或视图来提高聚类性能。大多数多视图子空间聚类方法都是分别构造每个视图的关联矩阵,然后用谱聚类实现多视图数据聚类。多视图低秩稀疏子空间聚类(MLRSSC)是多视图子空间聚类中一种有效且流行的聚类算法。该方法通过创建输入数据所有视图集成的关联矩阵来探索联合子空间表示。此外,该方法还引入了低秩约束和稀疏约束,提高了聚类效果。然而,原来的MLRSSC使用均方误差作为保真度项,没有考虑实际情况下复杂的噪声污染。因此,为了提高MLRSSC的性能,我们引入了一种复杂的噪声建模方法,即独立分段同分布(IPID)噪声模型。相关实验结果证实,该算法在多个真实数据集上优于许多最先进的子空间聚类方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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