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5 months ago

Domain Generalization using Causal Matching

Divyat Mahajan; Shruti Tople; Amit Sharma

Domain Generalization using Causal Matching

Abstract

In the domain generalization literature, a common objective is to learn representations independent of the domain after conditioning on the class label. We show that this objective is not sufficient: there exist counter-examples where a model fails to generalize to unseen domains even after satisfying class-conditional domain invariance. We formalize this observation through a structural causal model and show the importance of modeling within-class variations for generalization. Specifically, classes contain objects that characterize specific causal features, and domains can be interpreted as interventions on these objects that change non-causal features. We highlight an alternative condition: inputs across domains should have the same representation if they are derived from the same object. Based on this objective, we propose matching-based algorithms when base objects are observed (e.g., through data augmentation) and approximate the objective when objects are not observed (MatchDG). Our simple matching-based algorithms are competitive to prior work on out-of-domain accuracy for rotated MNIST, Fashion-MNIST, PACS, and Chest-Xray datasets. Our method MatchDG also recovers ground-truth object matches: on MNIST and Fashion-MNIST, top-10 matches from MatchDG have over 50% overlap with ground-truth matches.

Code Repositories

microsoft/robustdg
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
domain-generalization-on-pacs-2MDG-Hybrid (Resnet-18)
Average Accuracy: 84.35
domain-generalization-on-pacs-2MDG-Hybrid (ResNet-50)
Average Accuracy: 87.52
domain-generalization-on-rotated-fashionMatchDG
Accuracy: 82.8

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Domain Generalization using Causal Matching | Papers | HyperAI