使用沙漏共聚类分析3g网络中的用户

Ram Keralapura, A. Nucci, Zhi-Li Zhang, Lixin Gao
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引用次数: 103

摘要

随着智能手机的广泛普及,越来越多的用户在旅途中上网。了解移动用户的浏览行为非常重要,原因如下。例如,它可以帮助蜂窝(数据)服务提供商(csp)提高服务性能,从而提高用户满意度。它还可以提供关于如何通过提供动态内容个性化和推荐或位置感知服务来增强移动用户体验的宝贵见解。在本文中,我们试图通过调查移动用户之间是否存在不同的“行为模式”来理解移动用户的浏览行为。我们的研究基于从北美一家大型3G CSP收集的真实移动网络数据。我们将这个用户行为分析问题表述为“共聚类”问题,即,我们同时对用户(具有相似浏览行为的用户)和浏览配置文件(志同道合的用户)进行分组。我们提出并开发了一种可扩展的共聚类方法,Phantom,使用一种新的沙漏模型。提出的沙漏模型首先对输入数据进行降维处理,并对低维数据进行分维分层共聚;然后执行恢复原始维度的扩展步骤。将Phantom应用于移动网络数据,我们发现存在许多普遍而独特的行为模式,这些行为模式会随着时间的推移而持续存在,这表明3G蜂窝网络中的用户浏览行为可以使用少量的共簇来捕获。例如,大多数用户的行为可以被分类为同质(用户的浏览兴趣非常有限)或异质(用户的浏览兴趣非常多样化),这种行为特征在短(30分钟)或长(6小时)的时间尺度上都不会发生显著变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Profiling users in a 3g network using hourglass co-clustering
With widespread popularity of smart phones, more and more users are accessing the Internet on the go. Understanding mobile user browsing behavior is of great significance for several reasons. For example, it can help cellular (data) service providers (CSPs) to improve service performance, thus increasing user satisfaction. It can also provide valuable insights about how to enhance mobile user experience by providing dynamic content personalization and recommendation, or location-aware services. In this paper, we try to understand mobile user browsing behavior by investigating whether there exists distinct "behavior patterns" among mobile users. Our study is based on real mobile network data collected from a large 3G CSP in North America. We formulate this user behavior profiling problem as a "co-clustering" problem, i.e., we group both users (who share similar browsing behavior), and browsing profiles (of like-minded users) simultaneously. We propose and develop a scalable co-clustering methodology, Phantom, using a novel hourglass model. The proposed hourglass model first reduces the dimensions of the input data and performs divisive hierarchical co-clustering on the lower dimensional data; it then carries out an expansion step that restores the original dimensions. Applying Phantom to the mobile network data, we find that there exists a number of prevalent and distinct behavior patterns that persist over time, suggesting that user browsing behavior in 3G cellular networks can be captured using a small number of co-clusters. For instance, behavior of most users can be classified as either homogeneous (users with very limited set of browsing interests) or heterogeneous (users with very diverse browsing interests), and such behavior profiles do not change significantly at either short (30-min) or long (6 hour) time scales.
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