4.4 Article

Bayes Factor Approaches for Testing Interval Null Hypotheses

Journal

PSYCHOLOGICAL METHODS
Volume 16, Issue 4, Pages 406-419

Publisher

AMER PSYCHOLOGICAL ASSOC
DOI: 10.1037/a0024377

Keywords

Bayesian analysis; Bayes factor; equivalence tests; effect size

Funding

  1. Divn Of Social and Economic Sciences
  2. Direct For Social, Behav & Economic Scie [1024080] Funding Source: National Science Foundation

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Psychological theories are statements of constraint. The role of hypothesis testing in psychology is to test whether specific theoretical constraints hold in data. Bayesian statistics is well suited to the task of finding supporting evidence for constraint, because it allows for comparing evidence for 2 hypotheses against each another. One issue in hypothesis testing is that constraints may hold only approximately rather than exactly, and the reason for small deviations may be trivial or uninteresting. In the large-sample limit, these uninteresting, small deviations lead to the rejection of a useful constraint. In this article, we develop several Bayes factor 1-sample tests for the assessment of approximate equality and ordinal constraints. In these tests, the null hypothesis covers a small interval of non-0 but negligible effect sizes around 0. These Bayes factors are alternatives to previously developed Bayes factors, which do not allow for interval null hypotheses, and may especially prove useful to researchers who use statistical equivalence testing. To facilitate adoption of these Bayes factor tests, we provide easy-to-use software.

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