English

Complementary-Label Learning for Arbitrary Losses and Models

Machine Learning 2019-11-20 v4 Machine Learning

Abstract

In contrast to the standard classification paradigm where the true class is given to each training pattern, complementary-label learning only uses training patterns each equipped with a complementary label, which only specifies one of the classes that the pattern does not belong to. The goal of this paper is to derive a novel framework of complementary-label learning with an unbiased estimator of the classification risk, for arbitrary losses and models---all existing methods have failed to achieve this goal. Not only is this beneficial for the learning stage, it also makes model/hyper-parameter selection (through cross-validation) possible without the need of any ordinarily labeled validation data, while using any linear/non-linear models or convex/non-convex loss functions. We further improve the risk estimator by a non-negative correction and gradient ascent trick, and demonstrate its superiority through experiments.

Keywords

Cite

@article{arxiv.1810.04327,
  title  = {Complementary-Label Learning for Arbitrary Losses and Models},
  author = {Takashi Ishida and Gang Niu and Aditya Krishna Menon and Masashi Sugiyama},
  journal= {arXiv preprint arXiv:1810.04327},
  year   = {2019}
}

Comments

accepted to ICML 2019 (Added errata on Nov. 19, 2019)

R2 v1 2026-06-23T04:34:19.347Z