
pmid: 27325166
pmc: PMC5405059
The analysis of R×C contingency tables usually features a test for independence between row and column counts. Throughout the social sciences, the adequacy of the independence hypothesis is generally evaluated by the outcome of a classical p-value null-hypothesis significance test. Unfortunately, however, the classical p-value comes with a number of well-documented drawbacks. Here we outline an alternative, Bayes factor method to quantify the evidence for and against the hypothesis of independence in R×C contingency tables. First we describe different sampling models for contingency tables and provide the corresponding default Bayes factors as originally developed by Gunel and Dickey (Biometrika, 61(3):545-557 (1974)). We then illustrate the properties and advantages of a Bayes factor analysis of contingency tables through simulations and practical examples. Computer code is available online and has been incorporated in the "BayesFactor" R package and the JASP program ( jasp-stats.org ).
BF, Experimental and Cognitive Psychology, Bayes Theorem, Article, 510, 004, Humans, Psychology (miscellaneous), Factor Analysis, Statistical, Psychology(all), Software
BF, Experimental and Cognitive Psychology, Bayes Theorem, Article, 510, 004, Humans, Psychology (miscellaneous), Factor Analysis, Statistical, Psychology(all), Software
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