Predicting Accident Severity: An Analysis Of Factors Affecting Accident Severity Using Random Forest Model
Adekunle Adefabi, Somtobe Olisah, Callistus Obunadike, Oluwatosin, Oyetubo, Esther Taiwo, Edward Tella

TL;DR
This study demonstrates that a Random Forest machine learning model can effectively predict accident severity with over 80% accuracy, aiding proactive road safety measures by identifying key weather-related factors.
Contribution
The paper introduces a novel application of Random Forest for accident severity prediction, optimizing hyperparameters and identifying key environmental variables influencing severity.
Findings
Random Forest achieved over 80% accuracy in predicting accident severity.
Top variables influencing severity include wind speed, humidity, and visibility.
Model performance metrics indicate high reliability and potential for road safety improvements.
Abstract
Road accidents have significant economic and societal costs, with a small number of severe accidents accounting for a large portion of these costs. Predicting accident severity can help in the proactive approach to road safety by identifying potential unsafe road conditions and taking well-informed actions to reduce the number of severe accidents. This study investigates the effectiveness of the Random Forest machine learning algorithm for predicting the severity of an accident. The model is trained on a dataset of accident records from a large metropolitan area and evaluated using various metrics. Hyperparameters and feature selection are optimized to improve the model's performance. The results show that the Random Forest model is an effective tool for predicting accident severity with an accuracy of over 80%. The study also identifies the top six most important variables in the…
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