Utilizing Import Vector Machines to Identify Dangerous Pro-active Traffic Conditions

Kui Yang, Wenjing Zhao, C. Antoniou
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引用次数: 1

Abstract

Traffic accidents have been a severe issue in metropolises with the development of traffic flow. This paper explores the theory and application of a recently developed machine learning technique, namely Import Vector Machines (IVMs), in real-time crash risk analysis, which is a hot topic to reduce traffic accidents. Historical crash data and corresponding traffic data from Shanghai Urban Expressway System were employed and matched. Traffic conditions are labelled as dangerous (i.e. probably leading to a crash) and safe (i.e. a normal traffic condition) based on 5-minute measurements of average speed, volume and occupancy. The IVM algorithm is trained to build the classifier and its performance is compared to the popular and successfully applied technique of Support Vector Machines (SVMs). The main findings indicate that IVMs could successfully be employed in real-time identification of dangerous pro-active traffic conditions. Furthermore, similar to the “support points” of the SVM, the IVM model uses only a fraction of the training data to index kernel basis functions, typically a much smaller fraction than the SVM, and its classification rates are similar to those of SVMs. This gives the IVM a computational advantage over the SVM, especially when the size of the training data set is large.
利用导入向量机识别危险的主动交通状况
随着交通流量的发展,城市交通事故已成为一个严重的问题。本文探讨了最近发展起来的机器学习技术——导入向量机(IVMs)在实时碰撞风险分析中的理论和应用,这是减少交通事故的一个热门话题。利用上海城市快速路系统的历史碰撞数据和相应的交通数据进行匹配。交通状况被标记为危险(即可能导致撞车)和安全(即正常交通状况)基于5分钟的平均速度,体积和占用率测量。通过训练IVM算法来构建分类器,并将其性能与流行且成功应用的支持向量机技术进行了比较。主要研究结果表明,ivm可以成功地用于实时识别危险的主动交通状况。此外,与支持向量机的“支撑点”类似,IVM模型仅使用一小部分训练数据来索引核基函数,通常比支持向量机小得多,其分类率与支持向量机相似。这使得IVM在计算上优于SVM,特别是当训练数据集的规模很大时。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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