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Main Authors: Pei, Haoran, Yang, Yuguang, Liu, Kexin, Zhang, Juan, Zhang, Baochang
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.25083
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author Pei, Haoran
Yang, Yuguang
Liu, Kexin
Zhang, Juan
Zhang, Baochang
author_facet Pei, Haoran
Yang, Yuguang
Liu, Kexin
Zhang, Juan
Zhang, Baochang
contents 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.In this paper, we propose Hierarchical Causal Dropout (HCD), a method that uses channel-level causal masks to enforce feature sparsity. This approach allows the model to separate causal features from spurious ones, effectively performing a causal intervention at the representation level. The training is guided by a Matrix-based Mutual Information (MMI) objective to minimize the mutual information between latent features and domain labels, while simultaneously maximizing the information shared with class labels.To ensure stability, we incorporate a StyleMix-driven VICReg module, which prevents the masks from accidentally filtering out essential causal data. Experimental results on OOD benchmarks show that HCD performs better than existing top-tier methods.
format Preprint
id arxiv_https___arxiv_org_abs_2603_25083
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Learning domain-invariant features through channel-level sparsification for Out-Of Distribution Generalization
Pei, Haoran
Yang, Yuguang
Liu, Kexin
Zhang, Juan
Zhang, Baochang
Computer Vision and Pattern Recognition
Artificial Intelligence
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.In this paper, we propose Hierarchical Causal Dropout (HCD), a method that uses channel-level causal masks to enforce feature sparsity. This approach allows the model to separate causal features from spurious ones, effectively performing a causal intervention at the representation level. The training is guided by a Matrix-based Mutual Information (MMI) objective to minimize the mutual information between latent features and domain labels, while simultaneously maximizing the information shared with class labels.To ensure stability, we incorporate a StyleMix-driven VICReg module, which prevents the masks from accidentally filtering out essential causal data. Experimental results on OOD benchmarks show that HCD performs better than existing top-tier methods.
title Learning domain-invariant features through channel-level sparsification for Out-Of Distribution Generalization
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2603.25083