How Conditioning on Posttreatment Variables Can Ruin Your Experiment and What to Do about It

  • Jacob M. Montgomery
  • , Brendan Nyhan
  • , Michelle Torres

    Research output: Contribution to journalArticlepeer-review

    573 Scopus citations

    Abstract

    In principle, experiments offer a straightforward method for social scientists to accurately estimate causal effects. However, scholars often unwittingly distort treatment effect estimates by conditioning on variables that could be affected by their experimental manipulation. Typical examples include controlling for posttreatment variables in statistical models, eliminating observations based on posttreatment criteria, or subsetting the data based on posttreatment variables. Though these modeling choices are intended to address common problems encountered when conducting experiments, they can bias estimates of causal effects. Moreover, problems associated with conditioning on posttreatment variables remain largely unrecognized in the field, which we show frequently publishes experimental studies using these practices in our discipline's most prestigious journals. We demonstrate the severity of experimental posttreatment bias analytically and document the magnitude of the potential distortions it induces using visualizations and reanalyses of real-world data. We conclude by providing applied researchers with recommendations for best practice.

    Original languageEnglish
    Pages (from-to)760-775
    Number of pages16
    JournalAmerican Journal of Political Science
    Volume62
    Issue number3
    DOIs
    StatePublished - Jul 2018

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