A uniformly consistent estimator of causal effects under the k-Triangle-Faithfulness assumption

Peter Spirtes, Jiji Zhang

    Research output: Contribution to journalJournal articlepeer-review

    23 Citations (Scopus)

    Abstract

    Spirtes, Glymour and Scheines [Causation, Prediction, and Search (1993) Springer] described a pointwise consistent estimator of the Markov equivalence class of any causal structure that can be represented by a directed acyclic graph for any parametric family with a uniformly consistent test of conditional independence, under the Causal Markov and Causal Faithfulness assumptions. Robins et al. [Biometrika 90 (2003) 491–515], however, proved that there are no uniformly consistent estimators of Markov equivalence classes of causal structures under those assumptions. Subsequently, Kalisch and Bühlmann [J. Mach. Learn. Res. 8 (2007) 613–636] described a uniformly consistent estimator of the Markov equivalence class of a linear Gaussian causal structure under the Causal Markov and Strong Causal Faithfulness assumptions. However, the Strong Faithfulness assumption may be false with high probability in many domains. We describe a uniformly consistent estimator of both the Markov equivalence class of a linear Gaussian causal structure and the identifiable structural coefficients in the Markov equivalence class under the Causal Markov assumption and the considerably weaker k-Triangle-Faithfulness assumption.
    Original languageEnglish
    Pages (from-to)662 - 678
    Number of pages17
    JournalStatistical Science
    Volume29
    Issue number4
    DOIs
    Publication statusPublished - Nov 2014

    User-Defined Keywords

    • Bayesian networks
    • Causal inference
    • estimation
    • model search
    • Model selection
    • structural equation models
    • uniform consistency

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