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An Unlicensed Taxi Identification Model Based on Big Data Analysis

机译:基于大数据分析的无牌出租车识别模型

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摘要

Social networks and mobile networks are exposing human beings to a big data era. With the support of big data analytics, conventional intelligent transportation systems (ITS) are gradually changing into data-driven ITS (D2 ITS). Along with traffic growth, D2ITS need to solve more real-life problems, including the issue of unlicensed taxis and their identification, which potentially disrupts the taxi business sector and endangers society safety. As a remedy to this issue, a smart model is proposed in this paper to identify unlicensed taxis. The proposed model consists of two submodel components, namely, candidate selection model and candidate refined model. The former is used to screen out a coarse-grained suspected unlicensed taxi candidate list. The list is taken as an input for the candidate refined model, which is based on machine learning to get a fine-grained list of suspected unlicensed taxis. The proposed model is evaluated using real-life data, and the obtained results are encouraging, demonstrating its efficiency and accuracy in identifying unlicensed taxis, helping governments to better regulate the traffic operation and reduce associated costs.
机译:社交网络和移动网络使人类处于大数据时代。在大数据分析的支持下,传统的智能交通系统(ITS)逐渐转变为数据驱动的ITS(D2 ITS)。随着交通的增长,D2ITS需要解决更多现实生活中的问题,包括无牌出租车及其识别问题,这可能会扰乱出租车业务部门并危及社会安全。为了解决这个问题,本文提出了一种智能模型来识别无执照的出租车。所提出的模型由两个子模型组件组成,即候选者选择模型和候选者精炼模型。前者用于筛选出粗粒度的可疑无牌出租车候选人名单。该列表被用作候选精炼模型的输入,该模型基于机器学习来获得可疑无牌出租车的细粒度列表。该模型使用现实数据进行了评估,所得结果令人鼓舞,证明了其在识别无牌出租车方面的效率和准确性,有助于政府更好地规范交通运营并降低相关成本。

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