Candidate-Label Learning: A Generalization of Ordinary-Label Learning and Complementary-Label Learning

Yasuhiro Katsura*, Masato Uchida

*この研究の対応する著者

研究成果: Article査読

抄録

A supervised learning framework has been proposed for a situation in which each training data is provided with a complementary label that represents a class to which the pattern does not belong. In the existing literature, complementary-label learning has been studied independently from ordinary-label learning, which assumes that each training data is provided with a label representing the class to which the pattern belongs. However, providing a complementary label should be treated as equivalent to providing the rest of all labels as candidates of the one true class. In this paper, we focus on the fact that the loss functions for one-versus-all and pairwise classifications corresponding to ordinary-label learning and complementary-label learning satisfy additivity and duality, and provide a framework that directly bridges the existing supervised learning frameworks. We also show that the complementary labels generated from a probabilistic model assumed in the existing literature is equivalent to the ordinary labels generated from a mixture of ground-truth probabilistic model and uniform distribution. Based on this finding, the relationship between our work and the existing work can be naturally derived. Further, we derive the classification risk and error bound for any loss functions that satisfy additivity and duality.

本文言語English
論文番号288
ジャーナルSN Computer Science
2
4
DOI
出版ステータスPublished - 2021 7月

ASJC Scopus subject areas

  • 計算理論と計算数学
  • コンピュータ ネットワークおよび通信
  • コンピュータ サイエンスの応用
  • コンピュータ サイエンス(全般)
  • 人工知能
  • コンピュータ グラフィックスおよびコンピュータ支援設計

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