Abstract

To undertake a reliable analysis of injury severity in road traffic accidents, a complete understanding of important attributes is essential. As a result of the shift from traditional statistical parametric procedures to computer-aided methods, machine learning approaches have become an important aspect in predicting the severity of road traffic injuries. The paper presents a hybrid feature selection-based machine learning classification approach for detecting significant attributes and predicting injury severity in single and multiple-vehicle accidents. To begin, we employed a Random Forests (RF) classifier in conjunction with an intrinsic wrapper-based feature selection approach called the Boruta Algorithm (BA) to find the relevant important attributes that determine injury severity. The influential attributes were then fed into a set of four classifiers to accurately predict injury severity (Naive Bayes (NB), K-Nearest Neighbor (K-NN), Binary Logistic Regression (BLR), and Extreme Gradient Boosting (XGBoost)). According to BA’s experimental investigation, the vehicle type was the most influential factor, followed by the month of the year, the driver’s age, and the alignment of the road segment. The driver’s gender, the presence of a median, and the presence of a shoulder were all found to be unimportant. According to classifier performance measures, XGBoost surpasses the other classifiers in terms of prediction performance. Using the specified attributes, the accuracy, Cohen’s Kappa, F1-Measure, and AUC-ROC values of the XGBoost were 82.10%, 0.607, 0.776, and 0.880 for single vehicle accidents and 79.52%, 0.569, 0.752, and 0.86 for multiple-vehicle accidents, respectively.

Highlights

  • In developing countries, road transport is the main mode of transportation for both freight and passenger traffic

  • Unlike motorways in Pakistan, National Highway–5 (N-5) is not an access-controlled highway and at-grade intersections are provided at various locations

  • The Boruta Algorithm (BA) was used to select the most influential attributes from the N-5 accident dataset for this purpose

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Summary

Introduction

Road transport is the main mode of transportation for both freight and passenger traffic. Over Increased reliance on the roadway network has put undue strain on the country’s highways, frequently resulting in fatalities, a situation exacerbated by their deteriorating condition. Almost no day passes without a road traffic accident on one of the country’s national highways or motorways, resulting in an increasing number of injuries and fatalities, as well as significant economic losses. Pakistan has become more mobile in recent years as a result of the construction and extension of highways. The possibility of fatal accidents on our national highways and motorways becomes a greater concern. According to the World Health Organization’s (WHO) report, the country has 25,781 road traffic fatalities per year [2]. Road traffic accidents have a wide range of consequences, ranging from the psychological impact on the individuals involved to the economic impact on the nation’s transportation infrastructure

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