Multi-view clustering study based on subspace

L. Wang, Dong Sun, Zhu Yuan, Q. Gao, Yixiang Lu
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Abstract

With the widespread existence of multi-view data, many multi-view clustering methods have emerged. The purpose of multi-view clustering is to classify data into multiple clusters based on different views. Existing multi-view clustering methods usually do not sufficiently mine the complementary information of data, which makes the effective information of multi-view data cannot be fully utilized. By considering the diversity of different views, we propose a new multi-view subspace clustering method. Specifically, we first extend single-view self-expression learning to the multi-view domain. Then, based on manifold learning, the public information of multi-view data is obtained. In addition, diversity among the data was measured using the Hilbert-Schmidt Independence Criteria (HSIC). Experimental results on four datasets show that our model has good clustering performance on different evaluation indicators.
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基于子空间的多视图聚类研究
随着多视图数据的广泛存在,出现了许多多视图聚类方法。多视图聚类的目的是根据不同的视图将数据分类到多个聚类中。现有的多视图聚类方法通常没有充分挖掘数据的互补信息,使得多视图数据的有效信息不能得到充分利用。考虑到不同视图的多样性,提出了一种新的多视图子空间聚类方法。具体来说,我们首先将单视图自我表达学习扩展到多视图领域。然后,基于流形学习,获得多视图数据的公共信息。此外,使用Hilbert-Schmidt独立性标准(HSIC)测量数据之间的多样性。在4个数据集上的实验结果表明,该模型在不同的评价指标上具有良好的聚类性能。
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