2020
DOI: 10.1016/j.jmp.2020.102441
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Bayesian hypothesis testing for Gaussian graphical models: Conditional independence and order constraints

Abstract: Gaussian graphical models (GGM; partial correlation networks) have become increasingly popular in the social and behavioral sciences for studying conditional (in)dependencies between variables. In this work, we introduce exploratory and confirmatory Bayesian tests for partial correlations. For the former, we first extend the customary GGM formulation that focuses on conditional dependence to also consider the null hypothesis of conditional independence for each partial correlation. Here a novel testing strateg… Show more

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Cited by 56 publications
(59 citation statements)
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“…The first step involved constructing an adjacency matrix of pairwise conditional relations among the set of items. We estimated the network structure using the Bayesian estimation for a Gaussian graphical model using the BGGM package in r statistical environment (Williams, 2018; Williams & Mulder, 2019). In this model, edges represent partial correlations between nodes, which means an edge depicts the association between two nodes controlling for the associations among all other nodes in the network.…”
Section: Methodsmentioning
confidence: 99%
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“…The first step involved constructing an adjacency matrix of pairwise conditional relations among the set of items. We estimated the network structure using the Bayesian estimation for a Gaussian graphical model using the BGGM package in r statistical environment (Williams, 2018; Williams & Mulder, 2019). In this model, edges represent partial correlations between nodes, which means an edge depicts the association between two nodes controlling for the associations among all other nodes in the network.…”
Section: Methodsmentioning
confidence: 99%
“…In this model, edges represent partial correlations between nodes, which means an edge depicts the association between two nodes controlling for the associations among all other nodes in the network. The BGGM has several advantages such as providing edgewise credible intervals from the posterior distributions as well as the possibility of the direct comparison between networks across samples that incorporates uncertainty within the Bayesian framework (Jones, Williams, & McNally, 2019; Williams & Mulder, 2019). To evaluate the accuracy of partial correlation estimates, we evaluated the credible intervals from the posterior distributions and identified nodes linked with cannabis/alcohol use with a 95% credible interval that does not include zero.…”
Section: Methodsmentioning
confidence: 99%
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“…If inferential statistics are employed for the purposes of data exploration, we can prioritize minimizing the probability of failing to reject a false null hypothesis ( Goeman et al, 2011 ; Jaeger and Halliday, 1998 ) as opposed to minimizing false positives because priority is given to not missing true discoveries. Nonetheless, other methods than hypothesis testing are often more closely associated with EDA due to their flexibility in revealing patterns, such as graphical evaluation of data ( Behrens, 1997 ; Tukey, 1980 ), exploratory factor analysis ( Behrens, 1997 ; Haig, 2005 ), principal components regression ( Massy, 1965 ), and Bayesian methods to generate EDA graphs ( Gelman, 2003, 2004 ; Williams and Mulder, 2020 ).…”
Section: Claim 3: Exploratory Research Uses “Wonky” Statisticsmentioning
confidence: 99%