Evaluation of inequality constrained hypotheses using a generalization of the AIC.
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2021-10
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taverne
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 Akaike-type 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. (PsycInfo Database Record (c) 2021 APA, all rights reserved)
Keywords
(in)equality constrained hypotheses, AIC, Akaike weights, GORICA, model selection, Taverne
Citation
Altinisik, Y, van Lissa, C, Hoijtink, H, Oldehinkel, A J & Kuiper, R 2021, 'Evaluation of inequality constrained hypotheses using a generalization of the AIC.', Psychological Methods, vol. 26, no. 5, pp. 599-621. https://doi.org/10.1037/met0000406