Sean M. O’BrienDavid B. Dunson
Summary Bayesian analyses of multivariate binary or categorical outcomes typically rely on probit or mixed effects logistic regression models that do not have a marginal logistic structure for the individual outcomes. In addition, difficulties arise when simple noninformative priors are chosen for the covariance parameters. Motivated by these problems, we propose a new type of multivariate logistic distribution that can be used to construct a likelihood for multivariate logistic regression analysis of binary and categorical data. The model for individual outcomes has a marginal logistic structure, simplifying interpretation. We follow a Bayesian approach to estimation and inference, developing an efficient data augmentation algorithm for posterior computation. The method is illustrated with application to a neurotoxicology study.
José Antonio Garcia-Gordillo (10526263)Antonio Camiro-Zúñiga (10526266)Mercedes Aguilar-Soto (10526269)Dalia Cuenca (10526272)Arturo Cadena-Fernández (10526275)Latife Salame Khouri (10526278)Jesica Naanous Rayek (10526281)Moises Mercado (10526284)
Matthias L. Herrmann (10931196)Johannes-Martin Hahn (10994362)Birgit Walter-Frank (10994365)Desiree M. Bollinger (10994368)Kristina Schmauder (10994371)Günter Schnauder (10994374)Michael Bitzer (214413)Nisar P. Malek (127224)Gerhard W. Eschweiler (9467717)Siri Göpel (10994377)
Ju‐Hyun ParkJi Yeh ChoiJungup LeeMinjung Kyung
Monia LupparelliGiovanni M. MarchettiClaudia Tarantola