Domain Agnostic Learning with Disentangled Representations
About
Unsupervised model transfer has the potential to greatly improve the generalizability of deep models to novel domains. Yet the current literature assumes that the separation of target data into distinct domains is known as a priori. In this paper, we propose the task of Domain-Agnostic Learning (DAL): How to transfer knowledge from a labeled source domain to unlabeled data from arbitrary target domains? To tackle this problem, we devise a novel Deep Adversarial Disentangled Autoencoder (DADA) capable of disentangling domain-specific features from class identity. We demonstrate experimentally that when the target domain labels are unknown, DADA leads to state-of-the-art performance on several image classification datasets.
Xingchao Peng, Zijun Huang, Ximeng Sun, Kate Saenko• 2019
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Image Classification | Office-10 + Caltech-10 | Average Accuracy92.9 | 77 | |
| Digit Classification | Digit-Five (test) | Average Accuracy62.3 | 60 | |
| Image Classification | Digits-Five | Accuracy (Source: mt)39.4 | 44 | |
| Diagnosis prediction | eICU spatial domain shift, Midwest as target (test) | Weighted F161.58 | 21 | |
| Multi-Target Domain Adaptation | Office-Caltech | Acc (A -> C,D,W)92 | 21 | |
| Heart failure prediction | eICU spatial domain shift 2014-2015 (test) | AUROC87.02 | 15 | |
| Heart failure prediction | OCHIN temporal domain shift 2012-2023 (test) | AUROC93.48 | 15 | |
| Diagnosis prediction | OCHIN temporal domain shift 2012-2023 (test) | w-F165.42 | 13 | |
| Heart failure prediction | OCHIN spatial gap | AUROC92.74 | 11 | |
| Image Classification | DomainNet v1 (test) | Accuracy (Clipart)26.1 | 10 |
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