Mining trajectory profiles for discovering user communities

Chih-Chieh Hung, Chih‐Wen Chang, Wen-Chih Peng
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引用次数: 45

Abstract

With the rapid development of positioning techniques (e.g., GPS), users can easily collect their trajectories. Furthermore, with the growing of Web 2.0, some web sites allow users to share their own trajectories. In such web sites, users are able to search trajectories that are interested by users. To provide more insights into these trajectories, in this paper, we target at the problem of discovering communities among users, where users in the same community have similar moving behaviors. Note that moving behaviors are usually represented as trajectory patterns where a user frequently travels. In this paper, we propose a framework to discover communities of users. Explicitly, we adopt a probabilistic suffix tree (abbreviated as PST) as a trajectory profile which truly reflects user moving behavior of a user. In light of trajectory profiles, we further formulate a similarity measurement among trajectory profiles of users. Based on the similarity measurement, we develop algorithm CI (standing for Community Identification) to discover user communities. Furthermore, for the same community, one representative PST is selected. When a new user is added, one could simply derive the similarity measurement by comparing representative PSTs, which is able to efficiently determine which community this new user should join. To evaluate our proposed methods, we conduct experiments on the synthetic dataset generated from one real dataset. Experimental results show that the trajectory profile proposed can effectively reflect user moving behavior, and our proposed methods can accurately identify communities among users.
挖掘轨迹概要文件以发现用户群体
随着定位技术(如GPS)的快速发展,用户可以很容易地收集他们的轨迹。此外,随着Web 2.0的发展,一些网站允许用户分享他们自己的轨迹。在这样的网站上,用户可以搜索自己感兴趣的轨迹。为了更深入地了解这些轨迹,在本文中,我们的目标是在用户中发现社区的问题,其中同一社区中的用户具有相似的移动行为。注意,移动行为通常表示为用户频繁移动的轨迹模式。在本文中,我们提出了一个框架来发现用户社区。明确地,我们采用概率后缀树(缩写为PST)作为真实反映用户移动行为的轨迹轮廓。根据用户的轨迹曲线,我们进一步制定了用户轨迹曲线之间的相似度度量。基于相似性度量,我们开发了社区识别算法(Community Identification, CI)来发现用户社区。此外,对于同一个社区,选择一个具有代表性的PST。当添加新用户时,可以简单地通过比较代表性的pst来获得相似性度量,这能够有效地确定该新用户应该加入哪个社区。为了评估我们提出的方法,我们在一个真实数据集生成的合成数据集上进行了实验。实验结果表明,所提出的轨迹轮廓能有效地反映用户的移动行为,所提出的方法能准确地识别用户之间的社区。
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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