Inferring individual physical locations with social friendships

Meng Zhou, Wei Tu, Qingquan Li, Y. Yue, Xiaomeng Chang
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引用次数: 4

Abstract

Physical location is an important characteristic for digital individuals, as it is widely used in location based services, such as navigation, advertisements, and recommendations. This paper focuses on the problem of inferring individual physical locations from their friendships in a social network. We represent individual locations with a few high frequency places to eliminate the noise influence. By using of interactions between users, a spatial based inferring model is developed to directly estimate individual physical locations. The spatial weighted clustering method is used by considering the structure of interactions between friends. Data from Tencent, the biggest social network service provider in China, is used to conduct an experiment to validate the performance of the proposed inferring framework. Results indicate the framework can predict individual locations within 15 km in distance error with the accuracy of 68%.
用社会友谊来推断个人的地理位置
物理位置是数字个体的一个重要特征,因为它广泛应用于基于位置的服务,如导航、广告和推荐。这篇论文的重点是在一个社会网络中从他们的友谊推断个人的物理位置的问题。我们用一些高频率的地方来表示单独的位置,以消除噪声的影响。利用用户之间的交互,建立了一个基于空间的推断模型来直接估计个人的物理位置。考虑好友间交互的结构,采用空间加权聚类方法。我们使用来自中国最大的社交网络服务提供商腾讯的数据进行实验,以验证所提出的推断框架的性能。结果表明,该框架可在距离误差为15 km以内预测单个位置,精度为68%。
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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