使用机器学习算法的道路交通事故数据分类

Bulbula Kumeda, Fengli Zhang, Fan Zhou, Sadiq Hussain, Ammar Almasri, Maregu Assefa
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引用次数: 21

摘要

世界上道路交通事故的急剧增加正在给人类生活的各个方面造成严重的问题。交通特征的最重要和最有意义的性质、因果分析以及不同因果因素之间的联系被忽视了。此外,交通事故数据只用于进行基本的统计分析和数据挖掘工作,结果只是模式和统计。该道路交通事故数据分类的主要目标是识别导致道路交通事故的主要和关键因素,形成降低事故严重程度的政策和预防措施。机器学习算法用于分析数据,提取隐藏的模式,预测事故的严重程度,并以有用的格式总结信息。在这项工作中,我们应用了不同的机器学习分类算法,并在这里讨论了Fuzzy-FARCHD、Random Forest、Hierarchal LVQ、RBF Network (Radial Basis Function Network)、Multilayer Perceptron和Naïve Bayes等六种准确率高、分类性能最好的算法,这些算法来自2016年英国道路交通事故数据集。该数据集包含了卡尔德代尔所有交通事故伤亡信息。分析结果表明,Fuzzy-FARCHD算法可以有效地对数据集进行分类,准确率达到85.94%。在这个作品中,我们揭示了照明条件,1路等级和No。,车辆数量是选择属性的关键特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Road Traffic Accident Data Using Machine Learning Algorithms
The dramatic increase in road traffic accidents in the world is causing serious problems in every aspect of human lives. The most important and meaningful nature of traffic characteristics, causation analysis, and associations between different causal factors have been ignored. Moreover, the traffic accident data is only used to conduct a rudimentary statistical analysis and data mining efforts which results only in patterns and statistics. The main targets of this road accident data classification are to identify the major and key factors that cause the road traffic accident and form policies and preventive actions that would reduce the accident severity level. Machine learning algorithms are used to analyze the data, extract hidden patterns, predict the severity level of the accidents and summarize the information in a useful format. In this work, we have applied different machine learning classification algorithms and discussed here the six algorithms with high accuracy and best classification performances such as Fuzzy-FARCHD, Random Forest, Hierarchal LVQ, RBF Network (Radial Basis Function Network), Multilayer Perceptron, and Naïve Bayes on road traffic accident data set obtained from UK road traffic accident of the year 2016. The data set contains information on all road accident casualties across Calderdale. The results from our analysis show that Fuzzy-FARCHD algorithm is effective to classify the dataset and achieves an accuracy of 85.94%. In this work, we have revealed that Lighting Conditions, 1st Road Class & No., Number of vehicles are the key features in selecting the attributes.
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