Efficiently Disentangle Causal Representations

Abstract

This paper proposes an efficient approach to learning disentangled representations with causal mechanisms based on the difference of conditional probabilities in original and new distributions. We approximate the difference with models’ generalization abilities so that it fits in the standard machine learning framework and can be computed efficiently. In contrast to the state-of-the-art approach, which relies on the learner’s adaptation speed to new distribution, the proposed approach only requires evaluating the model’s generalization ability. We provide a theoretical explanation for the advantage of the proposed method, and our experiments show that the proposed technique is 1.9–11.0$\times$ more sample efficient and 9.4–32.4$\times$ quicker than the previous method on various tasks.

Cite

Text

Li et al. "Efficiently Disentangle Causal Representations." Conference on Parsimony and Learning, 2024.

Markdown

[Li et al. "Efficiently Disentangle Causal Representations." Conference on Parsimony and Learning, 2024.](https://mlanthology.org/cpal/2024/li2024cpal-efficiently/)

BibTeX

@inproceedings{li2024cpal-efficiently,
  title     = {{Efficiently Disentangle Causal Representations}},
  author    = {Li, Yuanpeng and Hestness, Joel and Elhoseiny, Mohamed and Zhao, Liang and Church, Kenneth},
  booktitle = {Conference on Parsimony and Learning},
  year      = {2024},
  pages     = {54-71},
  volume    = {234},
  url       = {https://mlanthology.org/cpal/2024/li2024cpal-efficiently/}
}