Hypothesis-testing demands trustworthy data-a simulation approach to inferential statistics advocating the research program strategy

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Abstract

In psychology as elsewhere, the main statistical inference strategy to establish empirical effects is null-hypothesis significance testing (NHST). The recent failure to replicate allegedly well-established NHST-results, however, implies that such results lack sufficient statistical power, and thus feature unacceptably high error-rates. Using data-simulation to estimate the error-rates of NHST-results, we advocate the research program strategy (RPS) as a superior methodology. RPS integrates Frequentist with Bayesian inference elements, and leads from a preliminary discovery against a (random) H0-hypothesis to a statistical H1-verification. Not only do RPS-results feature significantly lower error-rates than NHST-results, RPS also addresses key-deficits of a "pure" Frequentist and a standard Bayesian approach. In particular, RPS aggregates underpowered results safely. RPS therefore provides a tool to regain the trust the discipline had lost during the ongoing replicability-crisis.

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Krefeld-Schwalb, A., Witte, E. H., & Zenker, F. (2018). Hypothesis-testing demands trustworthy data-a simulation approach to inferential statistics advocating the research program strategy. Frontiers in Psychology, 9(APR). https://doi.org/10.3389/fpsyg.2018.00460

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