TAROT: Towards Essentially Domain-Invariant Robustness with Theoretical Justification
About
Robust domain adaptation against adversarial attacks is a critical research area that aims to develop models capable of maintaining consistent performance across diverse and challenging domains. In this paper, we derive a new generalization bound for robust risk on the target domain using a novel divergence measure specifically designed for robust domain adaptation. Building upon this, we propose a new algorithm named TAROT, which is designed to enhance both domain adaptability and robustness. Through extensive experiments, TAROT not only surpasses state-of-the-art methods in accuracy and robustness but also significantly enhances domain generalization and scalability by effectively learning domain-invariant features. In particular, TAROT achieves superior performance on the challenging DomainNet dataset, demonstrating its ability to learn domain-invariant representations that generalize well across different domains, including unseen ones. These results highlight the broader applicability of our approach in real-world domain adaptation scenarios.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Unsupervised Domain Adaptation | Office-Home | -- | 238 | |
| Image Classification | Office-Home | -- | 142 | |
| Domain Adaptation | Office31 standard (test) | Standard Accuracy (A->D)93.37 | 28 | |
| Image Classification | VisDA 2017 (Real) | Standard Accuracy67.12 | 7 | |
| Domain Adaptation | DomainNet (test) | Standard Accuracy (C->I)14.65 | 5 | |
| Domain Adaptation | OfficeHome | Standard Accuracy (Ar->Cl)56.58 | 5 | |
| Domain Adaptation Image Classification | OfficeHome (All) | Standard Accuracy68.29 | 5 | |
| Image Classification | VisDA Syn. 2017 | Standard Accuracy0.8518 | 5 |