基于机器学习的卡拉奇交通事故分析与预测模型

S. Batool, M. A. Ismail, Shabbar Ali
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引用次数: 0

摘要

道路交通事故造成了极其密集的道路交通和司机相对较大的行动自由。由于卡拉奇的交通事故不断增加,调查导致这些死亡的主要因素至关重要。为此,机器学习技术提供了比其他统计方法更大的优势。在本研究中,从众多不同的机器学习算法中,采用随机森林和支持向量机(SVM)算法进行交通事故建模预测。实证结果表明,所建立的模型具有合理的精度。结果进一步表明,准确率随输出参数中属性数量的变化而波动。SVM的预测结果优于Random Forest。属性较少的参数(如处置),随机森林预测准确率为83.12%,属性较多的参数(如Months), SVM预测准确率为64.98%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis and Predictive Modeling of Traffic Incidents in Karachi using Machine Learning
Road traffic accidents have accounted to extremely dense road traffic and the relatively great freedom of movement given to drivers. Due to the increasing traffic accidents in Karachi, it is vital to investigate the major parameters that are causing these fatalities. For this purpose, machine learning techniques provide a greater advantage over other statistical methods. In this research, a novel approach that applies Random Forest and Support vector machine (SVM) algorithm out of many different machine learning algorithms for modeling traffic accidents prediction. Empirical results show that reasonable accuracy of the developed model. The results further showed the accuracy fluctuated according to the number of attributes in the output parameter. The results of SVM showed better predictions than that from Random Forest. The parameter with less attributes like Disposal has higher accuracy of prediction with Random Forest 83.12% whereas those with greater number of attribute have higher prediction accuracy with SVM e.g. Months with 64.98%.
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