This paper proposes a novel methodology to simultaneously model discrete outcome (binary) and continuous dependent variables. The proposed modeling framework addresses unobserved heterogeneity by accounting for both panel effects, and for contemporaneous (cross-equation) error correlation between the two dependent variables; while, variable endogeneity is addressed through the use of unrestricted – equation specific – instruments. To illustrate the applicability of the bivariate modeling framework, SHRP2 Naturalistic Driving Study (NDS) data are used to empirically investigate the driving behavior preceding pedestrian crosswalks, in terms of brake application (binary dependent variable, binary probit specified) and speed change (continuous ...
Motor vehicle crashes have increasingly become a serious concern for highway safety engineers and tr...
Modeling correlated count data through some bivariate (or multivariate) discrete distribution is ess...
Thesis (Master's)--University of Washington, 2016-03In studies lacking a control group, a crucial st...
This paper proposes a novel methodology to simultaneously model discrete outcome (binary) and contin...
The problem of dependence in the outcome variables has become an increasingly important issue of con...
Understanding variable dependence, particularly eliciting their statistical properties given a set o...
Understanding variable dependence, particularly eliciting their statistical properties given a set o...
In this paper a simultaneous modeling system for dichotomous endogenous variables is developed and a...
Access to thesis permanently restricted to Ball State community only.Motivation: Dependence of multi...
In public health research, it is common to follow a cohort of subjects over time, observing a vector...
A well-established approach to modeling clustered data introduces random effects in the model of int...
A general model for the mixed correlated negative binomial and continuous responses is proposed. It ...
We describe a mixed-effects model for non-negative continuous cross-sectional data in a two-part mod...
In the dissertation we consider a bivariate model for associated binary and continuous responses suc...
Multivariate outcomes are ubiquitous. Joint analysis of multivariate outcomes provides several benfi...
Motor vehicle crashes have increasingly become a serious concern for highway safety engineers and tr...
Modeling correlated count data through some bivariate (or multivariate) discrete distribution is ess...
Thesis (Master's)--University of Washington, 2016-03In studies lacking a control group, a crucial st...
This paper proposes a novel methodology to simultaneously model discrete outcome (binary) and contin...
The problem of dependence in the outcome variables has become an increasingly important issue of con...
Understanding variable dependence, particularly eliciting their statistical properties given a set o...
Understanding variable dependence, particularly eliciting their statistical properties given a set o...
In this paper a simultaneous modeling system for dichotomous endogenous variables is developed and a...
Access to thesis permanently restricted to Ball State community only.Motivation: Dependence of multi...
In public health research, it is common to follow a cohort of subjects over time, observing a vector...
A well-established approach to modeling clustered data introduces random effects in the model of int...
A general model for the mixed correlated negative binomial and continuous responses is proposed. It ...
We describe a mixed-effects model for non-negative continuous cross-sectional data in a two-part mod...
In the dissertation we consider a bivariate model for associated binary and continuous responses suc...
Multivariate outcomes are ubiquitous. Joint analysis of multivariate outcomes provides several benfi...
Motor vehicle crashes have increasingly become a serious concern for highway safety engineers and tr...
Modeling correlated count data through some bivariate (or multivariate) discrete distribution is ess...
Thesis (Master's)--University of Washington, 2016-03In studies lacking a control group, a crucial st...