使用机器学习算法对尼日利亚卡齐纳州道路交通事故进行预测分析:因素和缓解策略研究

U. Iliyasu, Muhammad Muntasir Yakudu, A.A. Abdulwasiu
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引用次数: 0

摘要

本研究旨在探索机器学习算法在预测尼日利亚卡齐纳州道路交通事故可能性方面的应用,目的是降低道路交通事故的高发率和相关的生命财产损失。该研究收集和分析了卡齐纳州道路交通事故的数据,包括事故数量、地点、一天中的时间和涉及的车辆类型。机器学习算法,如决策树、随机森林和k近邻,使用这些数据进行训练,以预测道路交通事故的可能性。该研究还通过使用特征选择和相关分析等技术确定了导致卡齐纳州道路交通事故的因素,以确定最重要的变量。调查结果可供包括政府、执法机构和道路安全组织在内的利益攸关方使用,以制定和实施有效的战略,减少卡齐纳州的道路交通事故。该研究利用从尼日利亚卡齐纳联邦道路安全队数据库收集的数据,并采用数据清洗和特征选择技术来提高数据质量。随机森林算法的预测值为85%,而k近邻(KNN)和决策树算法的预测值分别为17%和42%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predictive Analysis of Road Traffic Accidents in Katsina State, Nigeria Using Machine Learning Algorithms: A Study on Factors and Mitigation Strategies
This study aims to explore the use of machine learning algorithms in predicting the likelihood of road traffic accidents in Katsina State, Nigeria, with the goal of reducing the high rate of road traffic accidents and associated loss of lives and properties. The study collects and analyzes data on road traffic accidents in Katsina State, including the number of accidents, location, time of day, and the type of vehicles involved. Machine learning algorithms such as Decision Trees, Random Forest, and K-Nearest Neighbors, are trained using the data to predict the likelihood of road traffic accidents. The study also identifies the factors that contribute to road traffic accidents in Katsina State by using techniques such as feature selection and correlation analysis, to identify the most important variables. The findings can be used by stakeholders, including the government, law enforcement agencies, and road safety organizations, to develop and implement effective strategies to reducing road traffic accidents in Katsina State. The study utilizes data collected from the Federal Road Safety Corps database in Katsina, Nigeria, and employs data cleaning and feature selection techniques to improve data quality. The Random Forest algorithm achieved the predictive value as 85% while K-Nearest Neighbors (KNN) and Decision Tree algorithms yielded 17% and 42% respectively.
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