Certifiable Out-of-Distribution Generalization

Authors

  • Nanyang Ye Shanghai Jiao Tong University
  • Lin Zhu Shanghai Jiao Tong University
  • Jia Wang University of Cambridge
  • Zhaoyu Zeng Shanghai Jiao Tong University
  • Jiayao Shao University of Warwick
  • Chensheng Peng Shanghai Jiao Tong University
  • Bikang Pan ShanghaiTech University
  • Kaican Li Huawei Noah's Ark Lab
  • Jun Zhu Tsinghua University

DOI:

https://doi.org/10.1609/aaai.v37i9.26295

Keywords:

ML: Representation Learning

Abstract

Machine learning methods suffer from test-time performance degeneration when faced with out-of-distribution (OoD) data whose distribution is not necessarily the same as training data distribution. Although a plethora of algorithms have been proposed to mitigate this issue, it has been demonstrated that achieving better performance than ERM simultaneously on different types of distributional shift datasets is challenging for existing approaches. Besides, it is unknown how and to what extent these methods work on any OoD datum without theoretical guarantees. In this paper, we propose a certifiable out-of-distribution generalization method that provides provable OoD generalization performance guarantees via a functional optimization framework leveraging random distributions and max-margin learning for each input datum. With this approach, the proposed algorithmic scheme can provide certified accuracy for each input datum's prediction on the semantic space and achieves better performance simultaneously on OoD datasets dominated by correlation shifts or diversity shifts. Our code is available at https://github.com/ZlatanWilliams/StochasticDisturbanceLearning.

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Published

2023-06-26

How to Cite

Ye, N., Zhu, L., Wang, J., Zeng, Z., Shao, J., Peng, C., … Zhu, J. (2023). Certifiable Out-of-Distribution Generalization. Proceedings of the AAAI Conference on Artificial Intelligence, 37(9), 10927–10935. https://doi.org/10.1609/aaai.v37i9.26295

Issue

Section

AAAI Technical Track on Machine Learning IV