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3 months ago

Domain Generalization by Mutual-Information Regularization with Pre-trained Models

Junbum Cha Kyungjae Lee Sungrae Park Sanghyuk Chun

Domain Generalization by Mutual-Information Regularization with Pre-trained Models

Abstract

Domain generalization (DG) aims to learn a generalized model to an unseen target domain using only limited source domains. Previous attempts to DG fail to learn domain-invariant representations only from the source domains due to the significant domain shifts between training and test domains. Instead, we re-formulate the DG objective using mutual information with the oracle model, a model generalized to any possible domain. We derive a tractable variational lower bound via approximating the oracle model by a pre-trained model, called Mutual Information Regularization with Oracle (MIRO). Our extensive experiments show that MIRO significantly improves the out-of-distribution performance. Furthermore, our scaling experiments show that the larger the scale of the pre-trained model, the greater the performance improvement of MIRO. Source code is available at https://github.com/kakaobrain/miro.

Code Repositories

kakaobrain/miro
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
domain-generalization-on-domainnetMIRO (RegNetY-16GF, SWAD)
Average Accuracy: 60.7
domain-generalization-on-domainnetMIRO (ResNet-50, SWAD)
Average Accuracy: 47.0
domain-generalization-on-office-homeMIRO (ResNet-50, SWAD)
Average Accuracy: 72.4
domain-generalization-on-office-homeMIRO (RegNetY-16GF, SWAD)
Average Accuracy: 83.3
domain-generalization-on-pacs-2MIRO (ResNet-50, SWAD)
Average Accuracy: 88.4
domain-generalization-on-pacs-2MIRO (RegNetY-16GF, SWAD)
Average Accuracy: 96.8
domain-generalization-on-terraincognitaMIRO (ResNet-50, SWAD)
Average Accuracy: 52.9
domain-generalization-on-terraincognitaMIRO (RegNetY-16GF, SWAD)
Average Accuracy: 64.3
domain-generalization-on-vlcsMIRO (RegNetY-16GF, SWAD)
Average Accuracy: 81.7
domain-generalization-on-vlcsMIRO (ResNet-50, SWAD)
Average Accuracy: 79.6

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