A paper titled Investigation of hit-and-run crash severity through explainable machine learning authored by Stella Roussou, Apostolos Ziakopoulos and George Yannis, as been published in Transportation Letters. This study, uses a 5-year dataset from Victoria, Australia and analyzed with CatBoost algorithms and SHAP values using explainable machine learning techniques, to highlight key severity factors. Findings suggest that the presence of police at the crash scene emerges as the most critical determinant, underscoring the importance of law enforcement in mitigating severe crash outcomes. Furthermore crashes involving passenger vehicles and those on weekends were also linked to higher severity. These novel findings offer valuable insights for targeted interventions and policy-making to mitigate the impact of severe hit-and-run crashes and enhance road safety.
Archives
Tag cloud
accident severity
alcohol
buses
campaigns
cell phone
cerebral diseases
children
culture
cyclists
data analysis
distraction
driving simulator
education & training
enforcement
equipment
esafety
fatigue
helmet
impact assessment
international comparisons
junctions
lighting
lorries
measures assessment
mobility and transport
mopeds
motorcyclists
motorways
naturalistic driving
older drivers
pedestrians
road fatalities
road interventions
road safety data
rural roads
safety assessment
safety equipment
seat belt
speed
strategy
traffic
urban safety
weather
work related safety
young drivers