一个时空网络模型来表示和分析lbsn

B. Moreno, V. Times, S. Matwin
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引用次数: 1

摘要

随着基于位置的社交网络(LBSNs)的日益普及,用户可以分享他们去过的地方的信息,在现实世界(他们在全球的活动)和虚拟世界(他们在LBSNs上表达的这些活动)之间建立了联系。在本文中,我们提出了SiST模型,该模型包含从不同维度(社会、空间和时间)捕获的信息。所提出的模型是一个连接两个用户的图,只要他们都是朋友,并且在预定义的时间间隔内发布了他们在同一地点的信息。除了可以使用SiST提取移动模式外,该模型还可以通过执行分类算法来预测两个用户是否会在短时间内相遇。使用基于三个真实LBSN数据集构建的SiST网络进行了性能测试。结果表明,利用2天的历史数据,可以以较高的准确率(80.50% ~ 96.32%)预测两个人是否会见面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A spatio-temporal network model to represent and analyze LBSNs
With the increasing popularity of Location-based Social Networks (LBSNs), users have shared information about places they have visited, creating a link between the real world (their movements on the globe) and the virtual world (what they express about these movements on the LBSNs). In this article, we propose the SiST model, which contains information captured from different dimensions (Social, Spatial and Temporal). The proposed model is a graph that links two users, as long as both of them are friends and have published that they were at the same place within a predefined time interval. In addition to movement patterns that can be extracted using SiST, this model may be used to predict if two users will meet in a short time span by executing a classification algorithm. Performance tests were conducted with SiST networks that were built based on three real LBSN datasets. Results indicated that it is possible to forecast with high accuracy (ranging from 80.50% to 96.32%) whether two people will meet or not using two days of historical data.
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