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DISCO: Mitigating Bias in Deep Learning with Conditional Distance Correlation

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arxiv 2506.11653 v3 pith:BGRJJKQW submitted 2025-06-13 cs.CV cs.AIcs.LG

DISCO: Mitigating Bias in Deep Learning with Conditional Distance Correlation

classification cs.CV cs.AIcs.LG
keywords biascausalconditionaldeepdiscolearningcorrelationdistance
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Dataset bias often leads deep learning models to exploit spurious correlations instead of task-relevant signals. We introduce the Standard Anti-Causal Model (SAM), a unifying causal framework that characterizes bias mechanisms and yields a conditional independence criterion for causal stability. Building on this theory, we propose DISCO$_m$ and sDISCO, efficient and scalable estimators of conditional distance correlation that enable independence regularization in gradient-based models. Across six diverse datasets, our methods consistently outperform or are competitive in existing observed bias mitigation approaches, while requiring fewer hyperparameters and scaling seamlessly to multi-bias scenarios. This work bridges causal theory and practical deep learning, providing both a principled foundation and effective tools for robust prediction. Source Code: https://github.com/yakamoz5/DISCO.

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