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Multi-label co-training

conference contribution
posted on 2018-01-01, 00:00 authored by Y Xing, G Yu, C Domeniconi, J Wang, Zili ZhangZili Zhang
© 2018 International Joint Conferences on Artificial Intelligence. All right reserved. 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 multilabel 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.

History

Event

Artificial Intelligence. International Joint Conference (27th : 2018 : Stockholm, Sweden)

Pagination

2882 - 2888

Publisher

International Joint Conferences on Artificial Intelligence

Location

Stockholm, Sweden

Place of publication

Vienna, Austria

Start date

2018-07-13

End date

2018-07-19

ISSN

1045-0823

ISBN-13

9780999241127

Language

eng

Publication classification

E1 Full written paper - refereed

Copyright notice

2018, International Joint Conferences on Artificial Intelligence

Editor/Contributor(s)

J Lang

Title of proceedings

IJCAI 2018: Proceedings of the 27th International Joint Conference on Artificial Intelligence

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