Explicit View-labels Matter: A Multifacet Complementarity Study of Multi-view Clustering
Consistency and complementarity are two key ingredients for boosting multi-view clustering (MVC). Recently with the introduction of popular contrastive learning, the consistency learning of views has been further enhanced in MVC, leading to promising performance. However, by contrast, the complement...
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Zusammenfassung: | Consistency and complementarity are two key ingredients for boosting
multi-view clustering (MVC). Recently with the introduction of popular
contrastive learning, the consistency learning of views has been further
enhanced in MVC, leading to promising performance. However, by contrast, the
complementarity has not received sufficient attention except just in the
feature facet, where the Hilbert Schmidt Independence Criterion term or the
independent encoder-decoder network is usually adopted to capture view-specific
information. This motivates us to reconsider the complementarity learning of
views comprehensively from multiple facets including the feature-, view-label-
and contrast- facets, while maintaining the view consistency. We empirically
find that all the facets contribute to the complementarity learning, especially
the view-label facet, which is usually neglected by existing methods. Based on
this, a simple yet effective \underline{M}ultifacet \underline{C}omplementarity
learning framework for \underline{M}ulti-\underline{V}iew
\underline{C}lustering (MCMVC) is naturally developed, which fuses multifacet
complementarity information, especially explicitly embedding the view-label
information. To our best knowledge, it is the first time to use view-labels
explicitly to guide the complementarity learning of views. Compared with the
SOTA baselines, MCMVC achieves remarkable improvements, e.g., by average
margins over $5.00\%$ and $7.00\%$ respectively in complete and incomplete MVC
settings on Caltech101-20 in terms of three evaluation metrics. |
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DOI: | 10.48550/arxiv.2205.02507 |