Breaking the Spurious Causality of Conditional Generation via Fairness Intervention with Corrective Sampling
Abstract
Trying to capture the sample-label relationship, conditional generative models often end up inheriting the spurious correlation in the training dataset, giving label-conditional distributions that are severely imbalanced in another latent attribute. To mitigate such undesirable correlations engraved into generative models, which we call spurious causality, we propose a general two-step strategy. (a) Fairness Intervention (FI): Emphasize the minority samples that are hard to be generated due to the spurious correlation in the training dataset. (b) Corrective Sampling (CS): Filter the generated samples explicitly to follow the desired label-conditional latent attribute distribution. We design the fairness intervention for various degrees of supervision on the spurious attribute, including unsupervised, weakly-supervised, and semi-supervised scenarios. Our experimental results show that the proposed FICS can successfully resolve the spurious correlation in generated samples on various datasets.
Cite
Text
Nam et al. "Breaking the Spurious Causality of Conditional Generation via Fairness Intervention with Corrective Sampling." Transactions on Machine Learning Research, 2023.Markdown
[Nam et al. "Breaking the Spurious Causality of Conditional Generation via Fairness Intervention with Corrective Sampling." Transactions on Machine Learning Research, 2023.](https://mlanthology.org/tmlr/2023/nam2023tmlr-breaking/)BibTeX
@article{nam2023tmlr-breaking,
title = {{Breaking the Spurious Causality of Conditional Generation via Fairness Intervention with Corrective Sampling}},
author = {Nam, Junhyun and Mo, Sangwoo and Lee, Jaeho and Shin, Jinwoo},
journal = {Transactions on Machine Learning Research},
year = {2023},
url = {https://mlanthology.org/tmlr/2023/nam2023tmlr-breaking/}
}