| Literature DB >> 33523709 |
Ju-Hyun Park1, Ji Yeh Choi2, Jungup Lee3, Minjung Kyung4.
Abstract
Applications of component-based models have gained much attention as a means of accompanying dimension reduction in the regression setting and have been successfully implemented to model a univariate outcome in the behavioral and social sciences. Despite the prevalence of correlated ordinal outcome data in the fields, however, most of the extant component-based models have been extended to address the multivariate ordinal issue with a simplified but unrealistic assumption of independence, which may lead to biased statistical inferences. Thus, we propose a Bayesian methodology for a component-based model that accounts for unstructured residual covariances, while regressing multivariate ordinal outcomes on pre-defined sets of predictors. The proposed Bayesian multivariate ordinal logistic model re-expresses ordinal outcomes of interest with a set of latent continuous variables based on an approximate multivariate t-distribution. This contributes not only to developing an efficient Gibbs sampler, a Markov Chain Monte Carlo algorithm, but also to facilitating the interpretation of regression coefficients as log-transformed odds ratio. The empirical utility of the proposed method is demonstrated through analyzing a subset of data, extracted from the 2009 to 2010 Health Behavior in School-Aged Children study that investigates risk factors of four different forms of bullying perpetration and victimization: physical, social, racial, and cyber.Entities:
Keywords: Bayesian inference; Correlation and covariance matrices; component-based models; ordinal logistic regression
Mesh:
Year: 2021 PMID: 33523709 DOI: 10.1080/00273171.2021.1874260
Source DB: PubMed Journal: Multivariate Behav Res ISSN: 0027-3171 Impact factor: 3.085