Bayesian test of independence and conditional independence of two ordinal variables

For analysis of contingency tables with large sample size, classical approaches using approximate methods have high power. However, when the sample size is small or some cells have frequencies less than 5, classical approaches are so conservative. Also asymptotic behavior may be poor when the table...

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Main Authors: Zahra Saberi, Mojtab Ganjali
Format: Article
Language:English
Published: Atlantis Press 2015-06-01
Series:Journal of Statistical Theory and Applications (JSTA)
Subjects:
Online Access:https://www.atlantis-press.com/article/23227.pdf
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spelling doaj-2765ddd23c82458fb284e60d2dc7d8fb2020-11-25T00:54:30ZengAtlantis PressJournal of Statistical Theory and Applications (JSTA)1538-78872015-06-0114210.2991/jsta.2015.14.2.4Bayesian test of independence and conditional independence of two ordinal variablesZahra SaberiMojtab GanjaliFor analysis of contingency tables with large sample size, classical approaches using approximate methods have high power. However, when the sample size is small or some cells have frequencies less than 5, classical approaches are so conservative. Also asymptotic behavior may be poor when the table contains small counts. So, Bayesian test of independence for two-way contingency tables with ordinal variables is considered. The conditional independence of two ordinal variables given values of a controlling variable is also considered. To do these tests, gamma and partial gamma are used as association parameters for ordinal variables. Since gamma has a complex posterior form, it is intractable to compute directly the necessary inferential measures. So, a Dirichlet distribution is used as a prior distribution for the vector of cell probabilities, then the use of computational methods such as the Monte Carlo algorithm is introduced to generate samples from posterior distribution of gamma. Also, the Bayesian P-value and Bayes factor are obtained. In a simulation study, the choice of appropriate prior distribution for gamma is discussed and also the performance of gamma is compared to that of kappa. It is shown that, in contingency tables with ordinal variables, it is better to apply gamma as a measure of association. Some sensitivity analysis to the choice of prior are also performed on real applications.https://www.atlantis-press.com/article/23227.pdfAssociation parameters; Bayesian P-value; Gamma; Sensitivity Analysis
collection DOAJ
language English
format Article
sources DOAJ
author Zahra Saberi
Mojtab Ganjali
spellingShingle Zahra Saberi
Mojtab Ganjali
Bayesian test of independence and conditional independence of two ordinal variables
Journal of Statistical Theory and Applications (JSTA)
Association parameters; Bayesian P-value; Gamma; Sensitivity Analysis
author_facet Zahra Saberi
Mojtab Ganjali
author_sort Zahra Saberi
title Bayesian test of independence and conditional independence of two ordinal variables
title_short Bayesian test of independence and conditional independence of two ordinal variables
title_full Bayesian test of independence and conditional independence of two ordinal variables
title_fullStr Bayesian test of independence and conditional independence of two ordinal variables
title_full_unstemmed Bayesian test of independence and conditional independence of two ordinal variables
title_sort bayesian test of independence and conditional independence of two ordinal variables
publisher Atlantis Press
series Journal of Statistical Theory and Applications (JSTA)
issn 1538-7887
publishDate 2015-06-01
description For analysis of contingency tables with large sample size, classical approaches using approximate methods have high power. However, when the sample size is small or some cells have frequencies less than 5, classical approaches are so conservative. Also asymptotic behavior may be poor when the table contains small counts. So, Bayesian test of independence for two-way contingency tables with ordinal variables is considered. The conditional independence of two ordinal variables given values of a controlling variable is also considered. To do these tests, gamma and partial gamma are used as association parameters for ordinal variables. Since gamma has a complex posterior form, it is intractable to compute directly the necessary inferential measures. So, a Dirichlet distribution is used as a prior distribution for the vector of cell probabilities, then the use of computational methods such as the Monte Carlo algorithm is introduced to generate samples from posterior distribution of gamma. Also, the Bayesian P-value and Bayes factor are obtained. In a simulation study, the choice of appropriate prior distribution for gamma is discussed and also the performance of gamma is compared to that of kappa. It is shown that, in contingency tables with ordinal variables, it is better to apply gamma as a measure of association. Some sensitivity analysis to the choice of prior are also performed on real applications.
topic Association parameters; Bayesian P-value; Gamma; Sensitivity Analysis
url https://www.atlantis-press.com/article/23227.pdf
work_keys_str_mv AT zahrasaberi bayesiantestofindependenceandconditionalindependenceoftwoordinalvariables
AT mojtabganjali bayesiantestofindependenceandconditionalindependenceoftwoordinalvariables
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