M5 model tree based predictive modeling of road accidents on non-urban sections of highways in India

Accid Anal Prev. 2016 Nov:96:108-117. doi: 10.1016/j.aap.2016.08.004. Epub 2016 Aug 10.

Abstract

This work examines the application of M5 model tree and conventionally used fixed/random effect negative binomial (FENB/RENB) regression models for accident prediction on non-urban sections of highway in Haryana (India). Road accident data for a period of 2-6 years on different sections of 8 National and State Highways in Haryana was collected from police records. Data related to road geometry, traffic and road environment related variables was collected through field studies. Total two hundred and twenty two data points were gathered by dividing highways into sections with certain uniform geometric characteristics. For prediction of accident frequencies using fifteen input parameters, two modeling approaches: FENB/RENB regression and M5 model tree were used. Results suggest that both models perform comparably well in terms of correlation coefficient and root mean square error values. M5 model tree provides simple linear equations that are easy to interpret and provide better insight, indicating that this approach can effectively be used as an alternative to RENB approach if the sole purpose is to predict motor vehicle crashes. Sensitivity analysis using M5 model tree also suggests that its results reflect the physical conditions. Both models clearly indicate that to improve safety on Indian highways minor accesses to the highways need to be properly designed and controlled, the service roads to be made functional and dispersion of speeds is to be brought down.

Keywords: M5 model tree; Predictive modeling; Random effect negative binomial model; Road safety.

MeSH terms

  • Accidents, Traffic / statistics & numerical data*
  • Environment Design
  • Humans
  • India
  • Linear Models
  • Models, Theoretical*
  • Motor Vehicles / statistics & numerical data
  • Risk Assessment
  • Rural Population*
  • Safety / statistics & numerical data