Evaluation of Inequality Constrained Hypotheses Using a Generalization of the AIC

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Abstract

In the social and behavioral sciences, it is often not interesting to evaluate the null hypothesis by means of a p-value. Researchers are often more interested in quantifying the evidence in the data (as opposed to using p-values) with respect to their own expectations represented by equality and/or inequality constrained hypotheses (as opposed to the null hypothesis). This article proposes an Akaiketype information criterion (AIC; Akaike, 1973, 1974) called the generalized order-restricted information criterion approximation (GORICA) that evaluates (in)equality constrained hypotheses under a very broad range of statistical models. The results of five simulation studies provide empirical evidence showing that the performance of the GORICA on selecting the best hypothesis out of a set of (in)equality constrained hypotheses is convincing. To illustrate the use of the GORICA, the expectations of researchers are investigated in a logistic regression, multilevel regression, and structural equation model.

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Altinisik, Y., Lissa, C. J. V., Hoijtink, H., Oldehinkel, A. J., & Kuiper, R. M. (2021). Evaluation of Inequality Constrained Hypotheses Using a Generalization of the AIC. Psychological Methods, 26(5), 599–621. https://doi.org/10.1037/met0000406

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