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Large-Scale Multiview Clustering via Joint Learning of Anchor Representation and Multigraph Alignment.

Ronghua Shang, Jingya Liu, Xinyuan Wang

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    This study introduces ARMGA, a novel method for large-scale multiview clustering. ARMGA enhances clustering performance by jointly learning anchor representations and aligning multiple graphs, improving consistency across different data views.

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    Area of Science:

    • Data Science
    • Machine Learning
    • Computer Vision

    Background:

    • Anchor-based clustering is a key technique for large-scale data.
    • Multiview data presents challenges in balancing individual anchor graph distinctiveness with overall consistency.

    Purpose of the Study:

    • To propose a large-scale multiview clustering (MVC) method, ARMGA, that jointly learns anchor representation and multigraph alignment.
    • To address the challenge of balancing distinctiveness and consistency in multiview anchor-based clustering.

    Main Methods:

    • ARMGA utilizes a unified framework for concurrent learning of single-view anchor representations and virtual graph-based multigraph alignment.
    • It employs the Schatten-p norm on a tensor for adaptive anchor representation to reinforce cross-view consistency.
    • Cosine angle information from low-rank representation is used to attenuate noise and reduce computational complexity.

    Main Results:

    • ARMGA demonstrated significant improvements in clustering performance, with a 2%-10% increase over other algorithms on nine datasets.
    • The method maintained lower time complexity compared to existing approaches.
    • ARMGA effectively leverages complementary information across views to enhance overall structure and consensus.

    Conclusions:

    • ARMGA offers an effective solution for large-scale multiview clustering by integrating anchor representation learning and multigraph alignment.
    • The proposed method enhances cross-view consistency and robustness to noise.
    • ARMGA achieves superior clustering performance with improved efficiency.