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Screening p -hackers: Dissemination noise as bait

Author

Listed:
  • Federico Echenique

    (a Department of Economics , University of California , Berkeley , CA 94720)

  • Kevin He

    (b Department of Economics , University of Pennsylvania , Philadelphia , PA 19104)

Abstract

We show that adding noise before publishing data effectively screens p -hacked findings: spurious explanations produced by fitting many statistical models (data mining). Noise creates “baits†that affect two types of researchers differently. Uninformed p -hackers, who are fully ignorant of the true mechanism and engage in data mining, often fall for baits. Informed researchers, who start with an ex ante hypothesis, are minimally affected. We show that as the number of observations grows large, dissemination noise asymptotically achieves optimal screening. In a tractable special case where the informed researchers’ theory can identify the true causal mechanism with very few data, we characterize the optimal level of dissemination noise and highlight the relevant trade-offs. Dissemination noise is a tool that statistical agencies currently use to protect privacy. We argue this existing practice can be repurposed to screen p -hackers and thus improve research credibility.

Suggested Citation

  • Federico Echenique & Kevin He, 2024. "Screening p -hackers: Dissemination noise as bait," Proceedings of the National Academy of Sciences, Proceedings of the National Academy of Sciences, vol. 121(21), pages 2400787121-, May.
  • Handle: RePEc:nas:journl:v:121:y:2024:p:e2400787121
    DOI: 10.1073/pnas.2400787121
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