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.

Abstract

Causal discovery is challenging in general dynamical systems because, without strong structural assumptions, the underlying causal graph may not be identifiable even from interventional data. However, many real-world systems exhibit directional, cascade-like structure, in which components activate sequentially and upstream failures suppress downstream effects. We study causal discovery in such chain-reaction systems and show that the causal structure is uniquely identifiable from blocking interventions that prevent individual components from activating. We propose a minimal estimator with finite-sample guarantees, achieving exponential error decay and logarithmic sample complexity. Experiments on synthetic models and diverse chain-reaction environments demonstrate reliable recovery from a few interventions, while observational heuristics fail in regimes with delayed or overlapping causal effects.