Long run consequence of p-hacking

Abstract

We study the theoretical consequence of p-hacking on the accumulation of knowledge under the framework of mis-specified Bayesian learning. A sequence of researchers, in turn, choose projects that generate noisy information in a field. In choosing projects, researchers need to carefully balance as projects generates big information are less likely to succeed. In doing the project, a researcher p-hacks at intensity so that the success probability of a chosen project increases (unduly) by a constant . In interpreting previous results, researcher behaves as if there is no p-hacking because the intensity is unknown and presumably small. We show that over-incentivizing information provision leads to the failure of learning as long as ≠ 0. If the incentives of information provision is properly provided, learning is correct almost surely as long as is small.

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