Exploring the Risky Travel Area and Behavior of Car-hailing Service

Hongting Niu, Hengshu Zhu, Ying Sun, Xinjiang Lu, Jing Sun, Zhiyuan Zhao, Hui Xiong, Bo Lang
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引用次数: 1

Abstract

Recent years have witnessed the rapid development of car-hailing services, which provide a convenient approach for connecting passengers and local drivers using their personal vehicles. At the same time, the concern on passenger safety has gradually emerged and attracted more and more attention. While car-hailing service providers have made considerable efforts on developing real-time trajectory tracking systems and alarm mechanisms, most of them only focus on providing rescue-supporting information rather than preventing potential crimes. Recently, the newly available large-scale car-hailing order data have provided an unparalleled chance for researchers to explore the risky travel area and behavior of car-hailing services, which can be used for building an intelligent crime early warning system. To this end, in this article, we propose a Risky Area and Risky Behavior Evaluation System (RARBEs) based on the real-world car-hailing order data. In RARBEs, we first mine massive multi-source urban data and train an effective area risk prediction model, which estimates area risk at the urban block level. Then, we propose a transverse and longitudinal double detection method, which estimates behavior risk based on two aspects, including fraud trajectory recognition and fraud patterns mining. In particular, we creatively propose a bipartite graph-based algorithm to model the implicit relationship between areas and behaviors, which collaboratively adjusts area risk and behavior risk estimation based on random walk regularization. Finally, extensive experiments on multi-source real-world urban data clearly validate the effectiveness and efficiency of our system.
网约车风险出行区域及行为探析
近年来,网约车服务发展迅速,为使用私家车的乘客和当地司机提供了一种便捷的联系方式。与此同时,对乘客安全的关注也逐渐显现并引起越来越多的关注。虽然网约车服务提供商在开发实时轨迹跟踪系统和报警机制方面做出了相当大的努力,但它们中的大多数只关注于提供救援支持信息,而不是预防潜在的犯罪。最近,新获得的大规模网约车订单数据为研究人员探索网约车服务的风险出行区域和行为提供了无与伦比的机会,可用于构建智能犯罪预警系统。为此,在本文中,我们提出了一个基于现实世界网约车订单数据的风险区域和风险行为评估系统(RARBEs)。在RARBEs中,我们首先挖掘大量的多源城市数据,并训练一个有效的区域风险预测模型,该模型在城市街区水平上估计区域风险。然后,我们提出了一种横向和纵向双重检测方法,该方法从欺诈轨迹识别和欺诈模式挖掘两个方面对行为风险进行估计。特别地,我们创造性地提出了一种基于二部图的算法来建模区域和行为之间的隐式关系,该算法基于随机行走正则化协同调整区域风险和行为风险估计。最后,在多源真实城市数据上的大量实验清楚地验证了我们系统的有效性和效率。
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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