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TSBM: The Temporal-Spatial Bayesian Model for Location Prediction in Social Networks

机译:TSBM:社交网络中位置预测的时间空间贝叶斯模型

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In social networks, predicting a user's locations through those of his or her friends mainly relies on the selection method of the most influential friends of the user, which most of the existing location prediction methods fail to attach importance to. In this paper, we firstly present an analytical procedure in regard to the calculation of the theoretical maximum accuracy for location prediction by virtue of friends' locations. We further compare the theoretical maximum accuracy with the accuracy obtained by the current state-of-the-art methods, and propose an influential friend selection strategy, hoping to narrow the gap between them. More precisely, we define several features to measure the friends' influence on a user's locations, based on which we put forth a sequential random walk with restart procedure to rank the friends in terms of their influence. By dynamically selecting the top N influential friends of the user per time slice, we propose a temporal-spatial Bayesian model to characterize the dynamics of friends' influence for location prediction. Experiments on real data sets prove the effectiveness of our location prediction framework.
机译:在社交网络中,通过他或她的朋友预测用户的位置主要依赖于用户最有影响力的朋友的选择方法,其中大多数现有的位置预测方法无法重大重视。在本文中,我们首先提出了一个分析程序,在计算凭借朋友的位置的位置预测的理论最大精度的计算。我们进一步比较了理论最大精度,提出了目前最先进的方法获得的准确性,并提出了一种有影响力的朋友选择策略,希望缩小它们之间的差距。更精确地,我们定义了几个功能来衡量朋友对用户位置的影响,基于我们提出了一个顺序随机漫步,以重启程序在其影响方面排名朋友。通过动态选择每个时间切片的用户的顶部N个影响力的朋友,我们提出了一个时间空间贝叶斯模型,以表征朋友对位置预测的影响力的动态。真实数据集的实验证明了我们位置预测框架的有效性。

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