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Robust Invariant Representation Learning by Distribution Extrapolation

Machine Learning 2025-05-26 v2

Abstract

Invariant risk minimization (IRM) aims to enable out-of-distribution (OOD) generalization in deep learning by learning invariant representations. As IRM poses an inherently challenging bi-level optimization problem, most existing approaches -- including IRMv1 -- adopt penalty-based single-level approximations. However, empirical studies consistently show that these methods often fail to outperform well-tuned empirical risk minimization (ERM), highlighting the need for more robust IRM implementations. This work theoretically identifies a key limitation common to many IRM variants: their penalty terms are highly sensitive to limited environment diversity and over-parameterization, resulting in performance degradation. To address this issue, a novel extrapolation-based framework is proposed that enhances environmental diversity by augmenting the IRM penalty through synthetic distributional shifts. Extensive experiments -- ranging from synthetic setups to realistic, over-parameterized scenarios -- demonstrate that the proposed method consistently outperforms state-of-the-art IRM variants, validating its effectiveness and robustness.

Keywords

Cite

@article{arxiv.2505.16126,
  title  = {Robust Invariant Representation Learning by Distribution Extrapolation},
  author = {Kotaro Yoshida and Konstantinos Slavakis},
  journal= {arXiv preprint arXiv:2505.16126},
  year   = {2025}
}
R2 v1 2026-07-01T02:30:08.549Z