Comparing fatal crash risk factors by age and crash type by using machine learning techniques

This study aims to use machine learning methods to examine the causative factors of significant crashes, focusing on accident type and driver's age. In this study, a wide-ranging data set from Jeddah city is employed to look into various factors, such as whether the driver was male or female, w...

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Veröffentlicht in:PloS one 2024-05, Vol.19 (5), p.e0302171-e0302171
Hauptverfasser: Alshehri, Abdulaziz H, Alanazi, Fayez, Yosri, Ahmed M, Yasir, Muhammad
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Sprache:eng
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Zusammenfassung:This study aims to use machine learning methods to examine the causative factors of significant crashes, focusing on accident type and driver's age. In this study, a wide-ranging data set from Jeddah city is employed to look into various factors, such as whether the driver was male or female, where the vehicle was situated, the prevailing weather conditions, and the efficiency of four machine learning algorithms, specifically XGBoost, Catboost, LightGBM and RandomForest. The results show that the XGBoost Model (accuracy of 95.4%), the CatBoost model (94% accuracy), and the LightGBM model (94.9% accuracy) were superior to the random forest model with 89.1% accuracy. It is worth noting that the LightGBM had the highest accuracy of all models. This shows various subtle changes in models, illustrating the need for more analyses while assessing vehicle accidents. Machine learning is also a transforming tool in traffic safety analysis while providing vital guidelines for developing accurate traffic safety regulations.
ISSN:1932-6203
1932-6203
DOI:10.1371/journal.pone.0302171