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The Power of Tests for Detecting $p$-Hacking

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  • Graham Elliott
  • Nikolay Kudrin
  • Kaspar Wuthrich

Abstract

$p$-Hacking undermines the validity of empirical studies. A flourishing empirical literature investigates the prevalence of $p$-hacking based on the distribution of $p$-values across studies. Interpreting results in this literature requires a careful understanding of the power of methods for detecting $p$-hacking. We theoretically study the implications of likely forms of $p$-hacking on the distribution of $p$-values to understand the power of tests for detecting it. Power depends crucially on the $p$-hacking strategy and the distribution of true effects. Publication bias can enhance the power for testing the joint null of no $p$-hacking and no publication bias.

Suggested Citation

  • Graham Elliott & Nikolay Kudrin & Kaspar Wuthrich, 2022. "The Power of Tests for Detecting $p$-Hacking," Papers 2205.07950, arXiv.org, revised Apr 2024.
  • Handle: RePEc:arx:papers:2205.07950
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