Exploring crash-risk factors using Bayes’ theorem and an optimization routine
conference contribution
posted on 2015-12-09, 13:35authored byMarianna Imprialou, Mike Maher, Mohammed Quddus
Regression models used to analyse crash counts are associated with some kinds of data aggregation (either spatial, or temporal or both) that may result in inconsistent or incorrect outcomes. This paper introduces a new non-regression approach for analysing risk factors affecting crash counts without aggregating crashes. The method is an application of the Bayes’ Theorem that enables to compare the
distribution of the prevailing traffic conditions on a road network (i.e. a priori) with the distribution of traffic conditions just before crashes (i.e. a posteriori). By making use of Bayes’ Theorem, the
probability densities of continuous explanatory variables are estimated using kernel density estimation
and a posterior log likelihood is maximised by an optimisation routine (Maximum Likelihood Estimation). The method then estimates the parameters that define the crash risk that is associated with each of the examined crash contributory factors. Both simulated and real-world data were
employed to demonstrate and validate the developed theory in which, for example, two explanatory traffic variables speed and volume were employed. Posterior kernel densities of speed and volume at the location and time of crashes have found to be different that prior kernel densities of the same variables. The findings are logical as higher traffic volumes increase the risk of all crashes independently of collision type, severity and time of occurrence. Higher speeds were found to decrease the risk of multiple-vehicle crashes at peak-times and not to affect significantly multiple vehicle crash occurrences during off-peak times. However, the risk of single vehicle crashes always increases while speed increases.
History
School
Architecture, Building and Civil Engineering
Published in
Transportation Research Board
Citation
IMPRIALOU, M.I., MAHER, M. and QUDDUS, M.A., 2016. Exploring crash-risk factors using Bayes’ theorem and an optimization routine. To be presented at: Transportation Research Board 95th Annual Meeting,10th-14th January 2016, Washington DC.
Publisher
Transportation Research Board
Version
AM (Accepted Manuscript)
Publisher statement
This work is made available according to the conditions of the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International (CC BY-NC-ND 4.0) licence. Full details of this licence are available at: https://creativecommons.org/licenses/by-nc-nd/4.0/