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Öğe Within- cross- consensus-view representation-based multi-view multi-label learning with incomplete data(Elsevier, 2023) Zhu, Changming; Liu, Yanchen; Miao, Duoqian; Dong, Yilin; Pedrycz, WitoldThis article develops a multi-view multi-label learning for incomplete data which are ubiquitous with the usage of three kinds of representations including within-view representation, cross-view representation, and consensus-view representation. Different from the recent learning machines, the proposed learning machine takes the feature-oriented information, label-oriented information, and associated information between features and labels in multiple representations together and exploits the hidden useful information of available instances with the usage of instance-instance correlations, feature-feature correlations, label-label correlations, and feature-label correlations. The developed learning machine is named as within- cross-consensus view representation-based multi-view multi-label learning with incomplete data (WCC-MVML-ID). Extensive experiments on multiple multi-view and multi-label data sets with incomplete data validate the effectiveness of WCC-MVML-ID and it can be concluded that (1) WCC-MVML-ID outperforms other compared learning machines and its performances are more stable even though the missing rates of features and labels being larger; (2) compared with within-view information and consensus-view information, cross-view information is more useful for the processing problem about incomplete data; (3) WCC-MVML-ID can converge within 45 iterations.