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  • Fast Multi-View Clustering ...
    Shi, Shaojun; Nie, Feiping; Wang, Rong; Li, Xuelong

    IEEE transactions on knowledge and data engineering, 01/2023, Letnik: 35, Številka: 1
    Journal Article

    Multi-view clustering attracts considerable attention due to its effectiveness in unsupervised learning. However, previous multi-view spectral clustering methods include two separated steps: 1) Obtaining a spectral embedding; 2) Performing classical clustering methods. Although these methods have achieved promising performance, there is still some limitations. First, in computing spectral embedding, multi-view spectral clustering approaches exist high computational complexity since they usually need eigenvalue decomposition on laplacian matrix <inline-formula><tex-math notation="LaTeX">L</tex-math> <mml:math><mml:mi>L</mml:mi></mml:math><inline-graphic xlink:href="shi-ieq1-3078728.gif"/> </inline-formula>; Second, in constructing similarity matrices, previous methods need to compute similarity between any two samples; Third, the two-stage approach only can obtain the sub-optimal solution; Fourth, treating equally all views is unreasonable. To address these issues, we propose a Fast Multi-view Clustering via Prototype Graph (FMVPG) method. Specifically, the prototype graph is first constructed, and then simultaneously perform spectral embedding to obtain the real matrix and spectral rotation to get the indicator matrix. In addition, the alternative optimization strategy is used to solve the proposed model. Further, we conduct extensive experiments to evaluate the proposed FMVPG approach. These experimental results show the comparable or even better clustering performance than the state-of-the-art approaches.