Finding homogeneous groups in trajectory streams

E. Masciari
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引用次数: 8

Abstract

Trajectory data streams are huge amounts of data pertaining to time and position of moving objects. They are continuously generated by different sources exploiting a wide variety of technologies (e.g., RFID tags, GPS, GSM networks). Mining such amount of data is a challenging problem, since the possibility to extract useful information from this peculiar kind of data is crucial in many application scenarios such as vehicle traffic management, hand-off in cellular networks, supply chain management. Moreover, spatial data streams pose interesting challenges for their proper representation, thus making the mining process harder than for classical point data. In this paper, we address the problem of trajectory data streams clustering, that revealed really intriguing as we deal with a kind of data (trajectories) for which the order of elements is relevant. We propose a complete framework starting from data preparation task that allows us to make the mining step quite effective. Since the validation of data mining approaches has to be experimental we performed several tests on real world datasets that confirmed the efficiency and effectiveness of the proposed technique.
寻找轨迹流中的齐次群
轨迹数据流是关于运动物体的时间和位置的大量数据。它们是由利用各种技术(例如,RFID标签,GPS, GSM网络)的不同来源不断产生的。挖掘如此大量的数据是一个具有挑战性的问题,因为从这种特殊类型的数据中提取有用信息的可能性在许多应用场景中都是至关重要的,例如车辆交通管理、蜂窝网络切换、供应链管理。此外,空间数据流对其正确表示提出了有趣的挑战,从而使挖掘过程比传统的点数据更难。在本文中,我们解决了轨迹数据流聚类问题,当我们处理与元素顺序相关的一类数据(轨迹)时,它显示出真正有趣的问题。我们提出了一个完整的框架,从数据准备任务开始,使挖掘步骤非常有效。由于数据挖掘方法的验证必须是实验性的,我们在真实世界的数据集上进行了几次测试,以确认所提出技术的效率和有效性。
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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