Feb. 7, 2024, 5:44 a.m. | Irena Gao Shiori Sagawa Pang Wei Koh Tatsunori Hashimoto Percy Liang

cs.LG updates on arXiv.org arxiv.org

Models trained on one set of domains often suffer performance drops on unseen domains, e.g., when wildlife monitoring models are deployed in new camera locations. In this work, we study principles for designing data augmentations for out-of-domain (OOD) generalization. In particular, we focus on real-world scenarios in which some domain-dependent features are robust, i.e., some features that vary across domains are predictive OOD. For example, in the wildlife monitoring application above, image backgrounds vary across camera locations but indicate habitat …

cs.cv cs.lg data designing domain domains features focus locations monitoring performance robust robustness set study via wildlife work world

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