Evaluating alternate discrete outcome frameworks for modeling riders' red light running behavior

Accid Anal Prev. 2023 Oct:191:107232. doi: 10.1016/j.aap.2023.107232. Epub 2023 Jul 26.

Abstract

This paper aims to empirically evaluate the ordered and unordered discrete outcome frameworks to approach riders' red-light running (RLR) decisions and compare the differences in influencing factors between riders' risk-taking and opportunistic RLR behaviors. A total of 2057 cyclist samples approaching the intersections during red signals were observed by video in Beijing, China. To better capture the unobserved heterogeneity, apart from the traditional models, three advanced models including the random thresholds random parameters hierarchical ordered logit (RTRPHOL) model, the random parameters logit model with heterogeneity in means and variances (RPLHMV) model, and the correlated random parameters logit model with heterogeneity in means (CRPLHM), are developed. Results show that: 1) the unordered framework statistically outperformed its ordered counterparts, and the RPLHMV and CRPLHM models are statistically better than others. 2) The female and e-bicycle indicators produce a heterogeneity-in-means effect, and the low-volume and left-side indicators produce a heterogeneity-in-variances effect. 3) e-bike riders and riders from the right side are more inclined to have risk-taking behavior than opportunistic behavior, and both RLR behaviors of cyclists are most susceptible to the number of violating individual indicator. Findings illustrate that multilayer unobserved heterogeneity should be adequately considered in developing precise micro-simulation and practical guidance in traffic safety.

Keywords: Correlated random parameters logit model with heterogeneity-in-means; Cyclists; E-bike riders; Random parameters logit model with heterogeneity in means and variances; Random threshold random parameter hierarchical ordered logit model; Red-light running behavior.

MeSH terms

  • Accidents, Traffic*
  • Bicycling
  • China
  • Female
  • Humans
  • Light
  • Logistic Models
  • Risk-Taking*