Causal Discovery in Action: Learning Chain-Reaction Mechanisms from Interventions
arXiv cs.LG / 3/25/2026
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Key Points
- The paper addresses causal discovery in dynamical systems by focusing on a special case where causal structure forms chain-reaction cascades with sequential activation and upstream failures suppressing downstream effects.
- It shows that, under these chain-reaction directional properties, the causal graph becomes uniquely identifiable using blocking interventions that prevent individual components from activating.
- The authors introduce a minimal estimator with finite-sample guarantees, including exponential error decay and logarithmic sample complexity.
- Experiments across synthetic chain-reaction models indicate that the proposed intervention-based method can recover the causal structure reliably from only a few interventions, whereas observational heuristics break down with delayed or overlapping effects.
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