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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Index Terms
- Multi-view clustering study based on subspace
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