利用聚类用户从基于位置的SNS中发现本地化的时空模式

Ken-ichiro Nishioka, Yoshitatsu Matsuda, K. Yamaguchi
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引用次数: 1

摘要

本文提出了一种从基于位置的社交网络系统Foursquare中提取局域化时空模式的新方法。在此之前,我们提出了一种利用扩散型公式估计Foursquare用户概率分布的方法,并通过主成分分析从分布中提取了各种时空模式。然而,由于分布是所有用户的平均值,因此只提取了“全球”模式。因此,我们无法提取局部区域内有限用户的详细行为的局部模式。本文提出了一种通过用户聚类提取局部模式的新方法。首先,通过每个用户分布之间的海灵格距离来度量用户之间的距离。其次,将Ward方法(层次聚类分析中广泛使用的方法)应用于具有距离的用户。最后,从每个用户簇的分布中提取时空模式。在Foursquare真实数据集上的实验结果表明,该方法可以从每一组用户中提取出多种有趣的局部模式。
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Discovery of localized spatio-temporal patterns from location-based SNS by clustering users
In this paper, a new approach is proposed for extracting localized spatio-temporal patterns from Foursquare, which is a location-based social networking system (SNS). Previously, we have proposed a method estimating the probabilistic distribution of users in Foursquare by a diffusion-type formula and have extracted various spatio-temporal patterns from the distribution by principal component analysis. However, as the distribution was the average over all the users, only the “global” patterns were extracted. So, we can not extract localized patterns showing the detailed behaviors of limited users in local areas. In this paper, a new method is proposed in order to extract the localized patterns by clustering users. First, the distance among users is measured by the Hellinger distance among the distributions of each user. Next, Ward's method (which is a widely used method in hierarchical cluster analysis) is applied to the users with their distance. Finally, the spatio-temporal patterns are extracted from the distributions for each cluster of users. The results on the real Foursquare dataset show that the proposed method can extract various and interesting localized patterns from each cluster of users.
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