Operationalizing Longitudinal Causal Discovery Under Real-World Workflow Constraints
Tadahisa Okuda, Shohei Shimizu, Thong Pham, Tatsuyoshi Ikenoue, Shingo Fukuma

TL;DR
This paper introduces a framework for causal discovery in longitudinal data that incorporates real-world workflow constraints, improving interpretability and reducing ambiguity in large-scale health data analysis.
Contribution
It formalizes workflow-induced constraints to enhance causal discovery accuracy and interpretability without requiring new optimization algorithms.
Findings
Workflow constraints reduce graph space ambiguity.
Application to Japanese health data yields consistent causal structures.
Uncertainty quantification supports reliable effect estimates.
Abstract
Causal discovery has achieved substantial theoretical progress, yet its deployment in large-scale longitudinal systems remains limited. A key obstacle is that operational data are generated under institutional workflows whose induced partial orders are rarely formalized, enlarging the admissible graph space in ways inconsistent with the recording process. We characterize a workflow-induced constraint class for longitudinal causal discovery that restricts the admissible directed acyclic graph space through protocol-derived structural masks and timeline-aligned indexing. Rather than introducing a new optimization algorithm, we show that explicitly encoding workflow-consistent partial orders reduces structural ambiguity, especially in mixed discrete--continuous panels where within-time orientation is weakly identified. The framework combines workflow-derived admissible-edge constraints,…
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Taxonomy
TopicsBayesian Modeling and Causal Inference · Advanced Causal Inference Techniques · Machine Learning in Healthcare
