AI RESEARCH
Learning domain-invariant features through channel-level sparsification for Out-Of Distribution Generalization
arXiv CS.AI
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ArXi:2603.25083v1 Announce Type: cross Out-of-Distribution (OOD) generalization has become a primary metric for evaluating image analysis systems. Since deep learning models tend to capture domain-specific context, they often develop shortcut dependencies on these non-causal features, leading to inconsistent performance across different data sources. Current techniques, such as invariance learning, attempt to mitigate this. However, they struggle to isolate highly mixed features within deep latent spaces. This limitation prevents them from fully resolving the shortcut learning problem.