Multi-view Multi-label Learning with Incomplete Views and Labels

被引:0
|
作者
Changming Zhu
Lin Ma
机构
[1] Shanghai Maritime University,College of Information Engineering
关键词
Incomplete views and labels; Label-specific features; Multi-view Multi-label; Label correlation;
D O I
10.1007/s42979-021-00957-2
中图分类号
学科分类号
摘要
Data set with incomplete information, multi-granularity label correlation when label-specific features and complementarity information provided is ubiquitous in real-world applications. In this paper, we develop a new multi-view multi-label learning with incomplete views and labels (MVML-IVL) for solution and it is the first attempt to design a multi-view multi-label learning method with incomplete views and labels by the learning of label-specific features, label correlation matrix, low-rank assumption matrix, multi-granularity label correlation, and complementary information. Experimental results validate that (1) MVML-IVL achieves a better performance and it is superior to the classical multi-view (multi-label) learning methods in statistical; (2) the running time of MVML-IVL won’t add too much; (3) MVML-IVL has a good convergence and ability to process multi-view multi-label data sets; (4) multi-granularity label correlation plays an important role for the performance of MVML-IVL; (5) the influence of adjustable parameters is not too large.
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