Mining Spatial-Temporal geoMobile Data via Feature Distributional Similarity Graph

Arvind Narayanan, Saurabh Verma, Zhi-Li Zhang
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引用次数: 2

Abstract

Mobile devices and networks produce abundant data that exhibit geo-spatial and temporal properties mainly driven by human behavior and activities. We refer to such data as geoMobile data. Mining such data to extract meaningful patterns that are reflective of collective user activities and behavior can benefit mobile network resource management as well as the design and operations of mobile applications and services. However, diverse feature distributions inherent in such data make such a task challenging. In this paper we advocate an approach based on advanced machine learning algorithms to transform original data matrices into a feature distributional similarity graph and extract latent patterns from complex structures of geoMobile data. Our analysis is further aided with a visualization technique. Using mobile access data records from an operational cellular carrier, we demonstrate the potentials of our proposed approach under multiple settings, and make some very interesting observations from the obtained results.
基于特征分布相似图的时空地车数据挖掘
移动设备和网络产生大量数据,这些数据主要由人类行为和活动驱动,显示出地理空间和时间属性。我们把这样的数据称为geoobile数据。挖掘这些数据以提取反映集体用户活动和行为的有意义的模式可以有利于移动网络资源管理以及移动应用程序和服务的设计和操作。然而,这些数据中固有的不同特征分布使这项任务具有挑战性。本文提出了一种基于先进机器学习算法的方法,将原始数据矩阵转化为特征分布相似图,并从复杂结构的geoMobile数据中提取潜在模式。我们的分析得到了可视化技术的进一步帮助。使用来自运行的蜂窝运营商的移动接入数据记录,我们展示了我们提出的方法在多种设置下的潜力,并从所获得的结果中得出了一些非常有趣的观察结果。
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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