Evaluating Causal Discovery Algorithms for Path-Specific Fairness and Utility in Healthcare
arXiv cs.LG / 3/18/2026
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Key Points
- The authors address evaluation challenges in causal discovery for healthcare by constructing proxy ground-truth graphs with clinical experts and benchmarking on synthetic Alzheimer's disease and heart failure records.
- They evaluate the Peter-Clark, Greedy Equivalence Search, and Fast Causal Inference algorithms across structural recovery and path-specific fairness decomposition, going beyond composite fairness scores.
- On synthetic data, Peter-Clark achieved the best structural recovery, while on heart failure data, Fast Causal Inference yielded the highest utility.
- The study shows that path-specific effects, such as the ejection fraction, contribute measurable indirect effects (3.37 percentage points), driving variations in the fairness-utility ratio across algorithms.
- The results underscore the need for graph-aware fairness evaluation and fine-grained path-specific analysis when deploying causal discovery in clinical settings.
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