This paper proposes a reformulation of count models as a special case of generalized ordered-response models in which a single latent continuous variable is partitioned into mutually exclusive intervals. Using this equivalent latent variable-based generalized ordered response framework for count data models, we are then able to gainfully and efficiently introduce temporal and spatial dependencies through the latent continuous variables. Our formulation also allows handling excess zeros in correlated count data, a phenomenon that is commonly found in practice. A composite marginal likelihood inference approach is used to estimate model parameters. The modeling framework is applied to predict crash frequency at urban intersections in Arlingto...
There is limited adoption of research modeling crash severity frequency considering different crash ...
This paper proposes a flexible econometric structure for injury severity analysis at the level of in...
An adequate statistical methodology is required for modeling multivariate time series of counts. The...
This paper proposes a reformulation of count models as a special case of generalized orderedresponse...
This paper proposes an estimation approach for count data models with endogenous covariates. The max...
At the time of publication Chandra R. Bhat, Kathryn Born, and Raghuprasad Sidharthan were at the Uni...
Longitudinal intersection crash data are observations on a cross section of intersections that are o...
Longitudinal intersection crash data are observations on a cross section of intersections that are o...
Intersections could be considered as isolated when the distance between them is long because, the in...
Intersections could be considered as isolated when the distance between them is long because, the in...
textTransportation research regularly relies on data exhibiting both space and time dimensions. Than...
This paper proposes a new spatial multivariate count model to jointly analyze the traffic crash-rela...
In this study, the generalized estimating equations with the negative binomial link function were us...
In this study, the generalized estimating equations with the negative binomial link function were us...
textThe main goal of this research is to propose a specification to model the unobserved heterogenei...
There is limited adoption of research modeling crash severity frequency considering different crash ...
This paper proposes a flexible econometric structure for injury severity analysis at the level of in...
An adequate statistical methodology is required for modeling multivariate time series of counts. The...
This paper proposes a reformulation of count models as a special case of generalized orderedresponse...
This paper proposes an estimation approach for count data models with endogenous covariates. The max...
At the time of publication Chandra R. Bhat, Kathryn Born, and Raghuprasad Sidharthan were at the Uni...
Longitudinal intersection crash data are observations on a cross section of intersections that are o...
Longitudinal intersection crash data are observations on a cross section of intersections that are o...
Intersections could be considered as isolated when the distance between them is long because, the in...
Intersections could be considered as isolated when the distance between them is long because, the in...
textTransportation research regularly relies on data exhibiting both space and time dimensions. Than...
This paper proposes a new spatial multivariate count model to jointly analyze the traffic crash-rela...
In this study, the generalized estimating equations with the negative binomial link function were us...
In this study, the generalized estimating equations with the negative binomial link function were us...
textThe main goal of this research is to propose a specification to model the unobserved heterogenei...
There is limited adoption of research modeling crash severity frequency considering different crash ...
This paper proposes a flexible econometric structure for injury severity analysis at the level of in...
An adequate statistical methodology is required for modeling multivariate time series of counts. The...