Literature DB >> 32944410

Generative-Discriminative Complementary Learning.

Yanwu Xu1, Mingming Gong1, Junxiang Chen1, Tongliang Liu2, Kun Zhang3, Kayhan Batmanghelich1.   

Abstract

The majority of state-of-the-art deep learning methods are discriminative approaches, which model the conditional distribution of labels given inputs features. The success of such approaches heavily depends on high-quality labeled instances, which are not easy to obtain, especially as the number of candidate classes increases. In this paper, we study the complementary learning problem. Unlike ordinary labels, complementary labels are easy to obtain because an annotator only needs to provide a yes/no answer to a randomly chosen candidate class for each instance. We propose a generative-discriminative complementary learning method that estimates the ordinary labels by modeling both the conditional (discriminative) and instance (generative) distributions. Our method, we call Complementary Conditional GAN (CCGAN), improves the accuracy of predicting ordinary labels and is able to generate high-quality instances in spite of weak supervision. In addition to the extensive empirical studies, we also theoretically show that our model can retrieve the true conditional distribution from the complementarily-labeled data.

Entities:  

Year:  2020        PMID: 32944410      PMCID: PMC7494202          DOI: 10.1609/aaai.v34i04.6126

Source DB:  PubMed          Journal:  Proc Conf AAAI Artif Intell        ISSN: 2159-5399


  1 in total

1.  Classification with Noisy Labels by Importance Reweighting.

Authors:  Tongliang Liu; Dacheng Tao
Journal:  IEEE Trans Pattern Anal Mach Intell       Date:  2016-03       Impact factor: 6.226

  1 in total
  1 in total

1.  Label-Noise Robust Domain Adaptation.

Authors:  Xiyu Yu; Tongliang Liu; Mingming Gong; Kun Zhang; Kayhan Batmanghelich; Dacheng Tao
Journal:  Proc Mach Learn Res       Date:  2020-07
  1 in total

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