Litcius/Paper detail

Predicting crash injury severity at unsignalized intersections using support vector machines and naïve Bayes classifiers

Stephen Arhin, Adam Gatiba

2020Transportation Safety and Environment38 citationsDOIOpen Access PDF

Abstract

Abstract The Washington, DC crash statistic report for the period from 2013 to 2015 shows that the city recorded about 41 789 crashes at unsignalized intersections, which resulted in 14 168 injuries and 51 fatalities. The economic cost of these fatalities has been estimated to be in the millions of dollars. It is therefore necessary to investigate the predictability of the occurrence of theses crashes, based on pertinent factors, in order to provide mitigating measures. This research focused on the development of models to predict the injury severity of crashes using support vector machines (SVMs) and Gaussian naïve Bayes classifiers (GNBCs). The models were developed based on 3307 crashes that occurred from 2008 to 2015. Eight SVM models and a GNBC model were developed. The most accurate model was the SVM with a radial basis kernel function. This model predicted the severity of an injury sustained in a crash with an accuracy of approximately 83.2%. The GNBC produced the worst-performing model with an accuracy of 48.5%. These models will enable transport officials to identify crash-prone unsignalized intersections to provide the necessary countermeasures beforehand.

Topics & Concepts

Support vector machineBayes' theoremCrashStatisticNaive Bayes classifierComputer scienceMachine learningPredictabilityGaussian functionStatisticsArtificial intelligenceGaussianBayesian probabilityMathematicsQuantum mechanicsPhysicsProgramming languageTraffic and Road SafetyTraffic Prediction and Management TechniquesAutonomous Vehicle Technology and Safety