Label recovery and label correlation co-learning for multi-view multi-label classification with incomplete labels

Multi-view multi-label learning (MVML) is an important paradigm in machine learning, where each instance is represented by several heterogeneous views and associated with a set of class labels. However, label incompleteness and the ignorance of both the relationships among views and the correlations...

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Published inApplied intelligence (Dordrecht, Netherlands) Vol. 53; no. 8; pp. 9444 - 9462
Main Authors He, Zhi-Fen, Zhang, Chun-Hua, Liu, Bin, Li, Bo
Format Journal Article
LanguageEnglish
Published New York Springer US 01.04.2023
Springer Nature B.V
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ISSN0924-669X
1573-7497
1573-7497
DOI10.1007/s10489-022-03945-y

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Summary:Multi-view multi-label learning (MVML) is an important paradigm in machine learning, where each instance is represented by several heterogeneous views and associated with a set of class labels. However, label incompleteness and the ignorance of both the relationships among views and the correlations among labels will cause performance degradation in MVML algorithms. Accordingly, a novel method, label recovery and label correlation co-learning for M ulti - V iew M ulti - L abel classification with inco M plete L abels (MV2ML), is proposed in this paper. First, a label correlation-guided binary classifier kernel-based is constructed for each label. Then, we adopt the multi-kernel fusion method to effectively fuse the multi-view data by utilizing the individual and complementary information among multiple views and distinguishing the contribution difference of each view. Finally, we propose a collaborative learning strategy that considers the exploitation of asymmetric label correlations, the fusion of multi-view data, the recovery of incomplete label matrix and the construction of the classification model simultaneously. In such a way, the recovery of incomplete label matrix and the learning of label correlations interact and boost each other to guide the training of classifiers. Extensive experimental results demonstrate that MV2ML achieves highly competitive classification performance against state-of-the-art approaches on various real-world multi-view multi-label datasets in terms of six evaluation criteria.
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ISSN:0924-669X
1573-7497
1573-7497
DOI:10.1007/s10489-022-03945-y