2022
DOI: 10.48550/arxiv.2201.00714
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Multi-view Data Classification with a Label-driven Auto-weighted Strategy

Abstract: Distinguishing the importance of views has proven to be quite helpful for semi-supervised multi-view learning models. However, existing strategies cannot take advantage of semi-supervised information, only distinguishing the importance of views from a data feature perspective, which is often influenced by low-quality views then leading to poor performance. In this paper, by establishing a link between labeled data and the importance of different views, we propose an auto-weighted strategy to evaluate the impor… Show more

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