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Decomposition of Probabilities of Causation with Two Mediators

8 May 2025
Yuta Kawakami
Jin Tian
    CML
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Abstract

Mediation analysis for probabilities of causation (PoC) provides a fundamental framework for evaluating the necessity and sufficiency of treatment in provoking an event through different causal pathways. One of the primary objectives of causal mediation analysis is to decompose the total effect into path-specific components. In this study, we investigate the path-specific probability of necessity and sufficiency (PNS) to decompose the total PNS into path-specific components along distinct causal pathways between treatment and outcome, incorporating two mediators. We define the path-specific PNS for decomposition and provide an identification theorem. Furthermore, we conduct numerical experiments to assess the properties of the proposed estimators from finite samples and demonstrate their practical application using a real-world educational dataset.

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@article{kawakami2025_2505.04983,
  title={ Decomposition of Probabilities of Causation with Two Mediators },
  author={ Yuta Kawakami and Jin Tian },
  journal={arXiv preprint arXiv:2505.04983},
  year={ 2025 }
}
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