Calibrated Multi-label Classification with Label Correlations

被引:0
作者
Zhi-Fen He
Ming Yang
Hui-Dong Liu
Lei Wang
机构
[1] Nanjing Normal University,School of Computer Science and Technology
[2] Pingxiang University,School of Information and Computer Engineering
[3] Stony Brook University,Department of Computer Science
[4] University of Wollongong,School of Computing and Information Technology
来源
Neural Processing Letters | 2019年 / 50卷
关键词
Multi-label classification; Label correlations; Threshold calibration;
D O I
暂无
中图分类号
学科分类号
摘要
Multi-label classification is a special learning task where each instance may be associated with multiple labels simultaneously. There are two main challenges: (a) discovering and exploiting the label correlations automatically, and (b) separating the relevant labels from the irrelevant labels of each instance effectively. Nevertheless, many existing multi-label classification algorithms fail to deal with both challenges at the same time. In this paper, we integrate multi-label classification, label correlations and threshold calibration into a unified learning framework, and propose calibrated multi-label classification with label correlations, named CMLLC. Specifically, we firstly introduce a label covariance matrix to characterize the label correlations and a virtual label to calibrate label decision threshold of each instance. Secondly, the framework of our CMLLC model is constructed for joint learning of the label correlations and model parameters corresponding to each label and the virtual label. Lastly, the optimization problem is jointly convex and solved by an alternating iterative method. Experimental results on sixteen multi-label benchmark datasets in terms of five evaluation criteria demonstrate that CMLLC outperforms the state-of-the-art multi-label classification algorithms.
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页码:1361 / 1380
页数:19
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