Partial Label Learning by Semantic Difference Maximization

Abstract

Partial label learning is a weakly supervised learning framework, in which each instance is provided with multiple candidate labels while only one of them is correct. Most of the existing approaches focus on leveraging the instance relationships to disambiguate the given noisy label space, while it is still unclear whether we can exploit potentially useful information in label space to alleviate the label ambiguities. This paper gives a positive answer to this question for the first time. Specifically, if two instances do not share any common candidate labels, they cannot have the same ground-truth label. By exploiting such dissimilarity relationships from label space, we propose a novel approach that aims to maximize the latent semantic differences of the two instances whose ground-truth labels are definitely different, while training the desired model simultaneously, thereby continually enlarging the gap of label confidences between two instances of different classes. Extensive experiments on artificial and real-world partial label datasets show that our approach significantly outperforms state-of-the-art counterparts.

Cite

Text

Feng and An. "Partial Label Learning by Semantic Difference Maximization." International Joint Conference on Artificial Intelligence, 2019. doi:10.24963/IJCAI.2019/318

Markdown

[Feng and An. "Partial Label Learning by Semantic Difference Maximization." International Joint Conference on Artificial Intelligence, 2019.](https://mlanthology.org/ijcai/2019/feng2019ijcai-partial/) doi:10.24963/IJCAI.2019/318

BibTeX

@inproceedings{feng2019ijcai-partial,
  title     = {{Partial Label Learning by Semantic Difference Maximization}},
  author    = {Feng, Lei and An, Bo},
  booktitle = {International Joint Conference on Artificial Intelligence},
  year      = {2019},
  pages     = {2294-2300},
  doi       = {10.24963/IJCAI.2019/318},
  url       = {https://mlanthology.org/ijcai/2019/feng2019ijcai-partial/}
}