Bayesian model selection of structural explanatory models : application to roadaccident data. Paper presented at the XI Congreso de Ingenieria del Transporte (CIT 2014).

Author(s)
Dadashova, B. Arenas, B. Mira, J. & Aparicio, F.
Year
Abstract

Using the Bayesian approach as the model selection criteria, the main purpose in this study is to establish a practical road accident model that can provide a better interpretation and prediction performance. For this purpose we are using a structural explanatory model with autoregressive error term. The model estimation is carried out through Bayesian inference and the best model is selected based on the goodness of fit measures. To cross validate the model estimation further prediction analysis were done. As the road safety measures the number of fatal accidents in Spain, during 2000-2011 were employed. The results of the variable selection process show that the factors explaining fatal road accidents are mainly exposure, economic factors, and surveillance and legislative measures. The model selection shows that the impact of economic factors on fatal accidents during the period under study has been higher compared to surveillance and legislative measures. (Author/publisher)

Publication

Library number
20150186 ST [electronic version only]
Source

Procedia - Social and Behavioral Sciences, Vol. 160 (19 December 2014), p. 55-63, 23 ref.

Our collection

This publication is one of our other publications, and part of our extensive collection of road safety literature, that also includes the SWOV publications.