The purpose of this paper is to describe the mixed variables (ordered categorical and dichotomous) in Bayesian structural equation models. Markov chain Monte Carlo simulation (MCMC) via Gibbs sampling method is applied for estimation the parameters. Statistical analyses, which include parameters estimation, standard error, higest posterior density and Devience information creterion for testing the prposed models, are discussed. Hidden continuous normal distribution with censoring is used to handle the problem of mixed variables (ordered categorical and dichotomous). Comparison between Bayesian linear and non-linear SEMs are discussed. The proposed models are illustrated by a case study for breast cancer patient’s which obtained from the hos...
Abstract: A Bayesian hierarchical mixed model is developed for multiple comparisons under a simple o...
<p>Multilevel structural equation models are increasingly applied in psychological research. With in...
Non-linear structural equation models are widely used to analyze the relationships among outcomes an...
In this paper, ordered categorical variables are used to compare between linear and nonlinear Bayesi...
In this paper, ordered categorical variables are used to compare between linear and nonlinear Bayesi...
In this article, dichotomous variables are used to compare between linear and nonlinear Bayesian str...
In this paper, ordered categorical variables are used to compare between linear and nonlinear intera...
In this paper, Bayesian analysis is used in nonlinear structural equation models with two population...
This paper is designed to give a complete overview of the literature that is available, as it relate...
In this paper ordered categorical variables are used in Bayesian multiple group nonlinear structural...
Structural equation modeling (SEM) is a statistical methodology that is commonly used to study the r...
In this paper, Bayesian analysis is used in nonlinear structural equation models with two population...
Keywords: Latent variables, Ordered categorical data, Unordered categorical data, Nonignorable missi...
This book provides clear instructions to researchers on how to apply Structural Equation Models (SEM...
This thesis describes the parameter estimation of structural equation models with ordered categorica...
Abstract: A Bayesian hierarchical mixed model is developed for multiple comparisons under a simple o...
<p>Multilevel structural equation models are increasingly applied in psychological research. With in...
Non-linear structural equation models are widely used to analyze the relationships among outcomes an...
In this paper, ordered categorical variables are used to compare between linear and nonlinear Bayesi...
In this paper, ordered categorical variables are used to compare between linear and nonlinear Bayesi...
In this article, dichotomous variables are used to compare between linear and nonlinear Bayesian str...
In this paper, ordered categorical variables are used to compare between linear and nonlinear intera...
In this paper, Bayesian analysis is used in nonlinear structural equation models with two population...
This paper is designed to give a complete overview of the literature that is available, as it relate...
In this paper ordered categorical variables are used in Bayesian multiple group nonlinear structural...
Structural equation modeling (SEM) is a statistical methodology that is commonly used to study the r...
In this paper, Bayesian analysis is used in nonlinear structural equation models with two population...
Keywords: Latent variables, Ordered categorical data, Unordered categorical data, Nonignorable missi...
This book provides clear instructions to researchers on how to apply Structural Equation Models (SEM...
This thesis describes the parameter estimation of structural equation models with ordered categorica...
Abstract: A Bayesian hierarchical mixed model is developed for multiple comparisons under a simple o...
<p>Multilevel structural equation models are increasingly applied in psychological research. With in...
Non-linear structural equation models are widely used to analyze the relationships among outcomes an...