Selecting Data Augmentation for Simulating Interventions

Open Access
Authors
Publication date 2021
Journal Proceedings of Machine Learning Research
Event 38th International Conference on Machine Learning
Volume | Issue number 139
Pages (from-to) 4555-4562
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract

Machine learning models trained with purely observational data and the principle of empirical risk minimization (Vapnik 1992) can fail to generalize to unseen domains. In this paper, we focus on the case where the problem arises through spurious correlation between the observed domains and the actual task labels. We find that many domain generalization methods do not explicitly take this spurious correlation into account. Instead, especially in more application-oriented research areas like medical imaging or robotics, data augmentation techniques that are based on heuristics are used to learn domain invariant features. To bridge the gap between theory and practice, we develop a causal perspective on the problem of domain generalization. We argue that causal concepts can be used to explain the success of data augmentation by describing how they can weaken the spurious correlation between the observed domains and the task labels. We demonstrate that data augmentation can serve as a tool for simulating interventional data. We use these theoretical insights to derive a simple algorithm that is able to select data augmentation techniques that will lead to better domain generalization.
Document type Article
Note International Conference on Machine Learning, 18-24 July 2021, Virtual. - With supplementary file.
Language English
Related publication Selecting Data Augmentation for Simulating Interventions
Published at https://proceedings.mlr.press/v139/ilse21a.html https://arxiv.org/abs/2005.01856
Downloads
ilse21a (Final published version)
Supplementary materials
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