Journal article
Assessing injury severity of secondary incidents using support vector machines
J Li, J Guo, JS Wijnands, R Yu, C Xu, M Stevenson
Journal of Transportation Safety and Security | TAYLOR & FRANCIS INC | Published : 2022
Abstract
Compared to normal incidents, secondary incidents are more likely to result in severe injuries and fatalities. However, limited efforts have been made to unveil the factors affecting the severity of secondary incidents. Incidents that occurred on the Interstate-5 in California within five years were collected. Detailed dynamic traffic flow conditions, geometric characteristics and weather conditions were obtained. First, a Random Forest-based (RF) feature selection approach was adopted. Then, Support Vector Machine (SVM) models were developed to investigate the effects of contributing factors. For comparison, RF and Ordered Logistic (OL) models were also built based on the same dataset. It w..
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Awarded by National Natural Science Foundation of China
Funding Acknowledgements
This work was supported by the National Key R&D Program of China under Grant [2018YFB1600500], National Natural Science Foundation of China [71671126,51708421].