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A Five-Decision Testing Procedure to Infer the Value of a Unidimensional Parameter

Author

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  • Aaron McDaid
  • Zoltán Kutalik
  • Valentin Rousson

Abstract

A statistical test can be seen as a procedure to produce a decision based on observed data, where some decisions consist of rejecting a hypothesis (yielding a significant result) and some do not, and where one controls the probability to make a wrong rejection at some prespecified significance level. Whereas traditional hypothesis testing involves only two possible decisions (to reject or not a null hypothesis), Kaiser’s directional two-sided test as well as the more recently introduced testing procedure of Jones and Tukey, each equivalent to running two one-sided tests, involve three possible decisions to infer the value of a unidimensional parameter. The latter procedure assumes that a point null hypothesis is impossible (e.g., that two treatments cannot have exactly the same effect), allowing a gain of statistical power. There are, however, situations where a point hypothesis is indeed plausible, for example, when considering hypotheses derived from Einstein’s theories. In this article, we introduce a five-decision rule testing procedure, equivalent to running a traditional two-sided test in addition to two one-sided tests, which combines the advantages of the testing procedures of Kaiser (no assumption on a point hypothesis being impossible) and Jones and Tukey (higher power), allowing for a nonnegligible (typically 20%) reduction of the sample size needed to reach a given statistical power to get a significant result, compared to the traditional approach.

Suggested Citation

  • Aaron McDaid & Zoltán Kutalik & Valentin Rousson, 2019. "A Five-Decision Testing Procedure to Infer the Value of a Unidimensional Parameter," The American Statistician, Taylor & Francis Journals, vol. 73(4), pages 321-326, October.
  • Handle: RePEc:taf:amstat:v:73:y:2019:i:4:p:321-326
    DOI: 10.1080/00031305.2018.1437075
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