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Bayesian evaluation of informative hypotheses for multiple populations

Authors :
Hoijtink, Herbert
Gu, Xin
Mulder, Joris
Hoijtink, Herbert
Gu, Xin
Mulder, Joris
Source :
British Journal of Mathematical and Statistical Psychology vol.72 (2019) nr.2 p.219-243 [ISSN 0007-1102]
Publication Year :
2019

Abstract

The software package Bain can be used for the evaluation of informative hypotheses with respect to the parameters of a wide range of statistical models. For pairs of hypotheses the support in the data is quantified using the approximate adjusted fractional Bayes factor (BF). Currently, the data have to come from one population or have to consist of samples of equal size obtained from multiple populations. If samples of unequal size are obtained from multiple populations, the BF can be shown to be inconsistent. This paper examines how the approach implemented in Bain can be generalized such that multipleā€population data can properly be processed. The resulting multipleā€population approximate adjusted fractional Bayes factor is implemented in the R package Bain.

Details

Database :
OAIster
Journal :
British Journal of Mathematical and Statistical Psychology vol.72 (2019) nr.2 p.219-243 [ISSN 0007-1102]
Notes :
DOI: 10.1111/bmsp.12145, British Journal of Mathematical and Statistical Psychology vol.72 (2019) nr.2 p.219-243 [ISSN 0007-1102], English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1124836874
Document Type :
Electronic Resource