The problem of analyzing associated outcomes of mixed type arises frequently in practice. In this dissertation we develop several Bayesian models for analyzing associated discrete and continuous responses simultaneously using random effects. We also extend these models to overcome the bias in parameter estimation due to ignorance of skewness of the continuous response, a misclassified covariate, and a zero-inflated discrete response. Simulation studies indicate that our models provide good estimates of regression coefficients, response variability, and the correlation between responses. We also show that ignoring the random effects leads to a bias in parameter estimates which is magnified with increasing variability of the random effe...
Objective: The study aimed to develop a predictive model to deal with data fraught with heterogeneit...
In longitudinal studies or clustered designs, observations for each subject or cluster are dependent...
A Bayesian analysis is given of a random effects binary probit model that allows for heteroscedastic...
A random effects model is presented to estimate multivariate data of mixed data types. Such data typ...
Generalized additive mixed models extend the common parametric predictor of generalized linear model...
Includes bibliographical references (p. ).Mismeasurment, and specifically misclassification, are ine...
In crossed random effects designs, observations are nested in the combination of two random factors,...
Mixed Poisson models are most relevant to the analysis of longitudinal count data in various discipl...
The effectiveness of a Bayesian approach to the estimation problem in item response models has been...
Many study designs yield a variety of outcomes from each subject clustered within an experimental un...
Count data are subject to considerable sources of what is often referred to as non-sampling error. E...
In this paper we propose a general model determination strategy based on Bayesian methods for the no...
Random parameter models have been found to outperform fixed parameter models to estimate dose-respon...
We propose Bayesian generalized additive mixed models for correlated data, which arise frequently in...
We are interested in Bayesian modelling of panel data using a mixed effects model with heterogeneity...
Objective: The study aimed to develop a predictive model to deal with data fraught with heterogeneit...
In longitudinal studies or clustered designs, observations for each subject or cluster are dependent...
A Bayesian analysis is given of a random effects binary probit model that allows for heteroscedastic...
A random effects model is presented to estimate multivariate data of mixed data types. Such data typ...
Generalized additive mixed models extend the common parametric predictor of generalized linear model...
Includes bibliographical references (p. ).Mismeasurment, and specifically misclassification, are ine...
In crossed random effects designs, observations are nested in the combination of two random factors,...
Mixed Poisson models are most relevant to the analysis of longitudinal count data in various discipl...
The effectiveness of a Bayesian approach to the estimation problem in item response models has been...
Many study designs yield a variety of outcomes from each subject clustered within an experimental un...
Count data are subject to considerable sources of what is often referred to as non-sampling error. E...
In this paper we propose a general model determination strategy based on Bayesian methods for the no...
Random parameter models have been found to outperform fixed parameter models to estimate dose-respon...
We propose Bayesian generalized additive mixed models for correlated data, which arise frequently in...
We are interested in Bayesian modelling of panel data using a mixed effects model with heterogeneity...
Objective: The study aimed to develop a predictive model to deal with data fraught with heterogeneit...
In longitudinal studies or clustered designs, observations for each subject or cluster are dependent...
A Bayesian analysis is given of a random effects binary probit model that allows for heteroscedastic...