A Causal Framework for Mitigating Data Shifts in Healthcare
arXiv cs.LG / 3/17/2026
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Key Points
- A new causal framework is proposed to design predictive healthcare models that generalize across diverse patient populations and deployment environments.
- The approach uses causality to characterize domain shifts, enabling principled strategies to mitigate data shifts regardless of data modality.
- The framework helps diagnose why models fail to generalize and compares trade-offs of various domain generalization methods for healthcare settings.
- The paper argues this causality-based perspective underpins robust, interpretable AI solutions and supports reliable real-world deployment in healthcare.
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