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Discriminatively Relabel for Partial Multi-Label Learning

conference contribution
posted on 2024-11-03, 14:44 authored by Shuo He, Ke DengKe Deng, Li Li, Senlin Shu, Li Liu
Partial multi-label learning (PML) deals with the problem where each training example is assigned multiple candidate labels, only a part of which are correct. To learn from such PML examples, the straightforward model training tends to be misled by the noise candidate label set. To alleviate this problem, a coupled framework is established in this paper to learn the desired model and perform the relabeling procedure alternatively. In the relabeling procedure, instead of simply extracting relative label confidences, or deterministically eliminating low confidence labels and preserving high confidence labels as ground-truth ones, we introduce a soft sign thresholding operator to adaptively strengthen candidate labels with high confidence and weaken candidate labels with low confidence, which enlarges the difference of confidences of candidate labels within allowable range. We further show that the resulting nonconvex quadratic programming (QP) optimization problem can be relaxed into a convex QP problem with proper conditions. Extensive experiments on synthesized and real-world data sets demonstrate the effectiveness of our proposed approach.

History

Related Materials

  1. 1.
    DOI - Is published in 10.1109/ICDM.2019.00038
  2. 2.
    ISBN - Is published in 9781728146058 (urn:isbn:9781728146058)

Start page

280

End page

288

Total pages

9

Outlet

Proceedings of the 19th IEEE International Conference on Data Mining (ICDM 2019)

Name of conference

ICDM 2019

Publisher

IEEE

Place published

United States

Start date

2019-11-08

End date

2019-11-11

Language

English

Copyright

© 2019 IEEE

Former Identifier

2006114114

Esploro creation date

2022-11-12

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