Comparative analysis of regional variations in road traffic accident patterns with association rule mining

Q2 Computer Science
Albe Bing Zhe Chai, Bee Theng Lau, Mark Kit Tsun Tee, Christopher McCarthy
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引用次数: 0

Abstract

INTRODUCTION: Road Traffic Accidents (RTAs) patterns discovery is vital to formulate mitigation strategies based on the characteristics of RTAs.OBJECTIVES: Various studies have utilised Apriori algorithm for RTA pattern discovery. Hence, this work aimed to explore the applicability of FP-Growth algorithm to discover and compare the RTA patterns in several regions.METHODS: Orange data mining toolkit is used to discover RTA patterns from the open-access RTA datasets from Addis Ababa city (12,317 samples), Finland (371,213 samples), Berlin city-state (50,119 samples), New Zealand (776,878 samples), the UK (1,048,575 samples), and the US (173,829 samples).RESULTS: There are similarities and differences in RTA patterns among the six regions. The five common factors contributing to RTAs are road characteristics, type of road users or objects involved, environment, driver’s profile, and characteristics of RTA location. These findings could be beneficial for the authorities to formulate strategies to reduce the risk of RTAs.CONCLUSION: Discovery of RTA patterns in different regions is beneficial and future work is essential to discover the RTA patterns from different perspectives such as seasonal or periodical variations of RTA patterns.
利用关联规则挖掘对道路交通事故模式的地区差异进行比较分析
简介:发现道路交通事故(RTA)模式对于根据 RTA 的特点制定缓解策略至关重要:多项研究利用 Apriori 算法发现 RTA 模式。因此,本研究旨在探索 FP-Growth 算法的适用性,以发现和比较多个地区的 RTA 模式。方法:使用 Orange 数据挖掘工具包从亚的斯亚贝巴市(12,317 个样本)、芬兰(371,213 个样本)、柏林城邦(50,119 个样本)、新西兰(776,878 个样本)、英国(1,048,575 个样本)和美国(173,829 个样本)的开放存取 RTA 数据集中发现 RTA 模式。导致道路交通意外的五个共同因素是道路特点、道路使用者或涉及物体的类型、环境、驾驶员的情况以及道路交通意外发生地点的特点。结论:发现不同地区的道路交通安全模式是有益的,今后的工作必须从不同角度发现道路交通安全模式,如道路交通安全模式的季节性或周期性变化。
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来源期刊
EAI Endorsed Transactions on Pervasive Health and Technology
EAI Endorsed Transactions on Pervasive Health and Technology Computer Science-Computer Science (miscellaneous)
CiteScore
3.50
自引率
0.00%
发文量
14
审稿时长
10 weeks
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