Multi-Label Co-Training

Author:

Xing Yuying1,Yu Guoxian1,Domeniconi Carlotta2,Wang Jun1,Zhang Zili13

Affiliation:

1. College of Computer and Information Science, Southwest University, Chongqing 400715, China

2. Department of Computer Science, George Mason University, Fairfax 22030, USA

3. School of Information Technology, Deakin University, Geelong, VIC 3220, Australia

Abstract

Multi-label learning aims at assigning a set of appropriate labels to multi-label samples.  Although it has been successfully applied in various domains in recent years, most multi-label learning methods require sufficient labeled training samples, because of the large number of possible label sets.  Co-training, as an important branch of semi-supervised learning, can leverage unlabeled samples, along with scarce labeled ones, and can potentially help with the large labeled data requirement. However, it is a difficult challenge to combine multi-label learning with co-training. Two distinct issues are associated with the challenge: (i) how to solve the widely-witnessed class-imbalance problem in multi-label learning; and (ii) how to select samples with confidence, and  communicate their predicted labels among  classifiers for model refinement. To address these issues, we introduce an approach called Multi-Label Co-Training (MLCT). MLCT leverages information concerning the co-occurrence  of pairwise labels to address the class-imbalance challenge; it introduces a predictive reliability measure to select samples, and applies label-wise filtering to confidently communicate labels of selected samples among co-training classifiers.  MLCT performs favorably against related competitive multi-label learning methods on benchmark datasets and it is also robust to the input parameters.

Publisher

International Joint Conferences on Artificial Intelligence Organization

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