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Personal social relations research based on Weibo location check-in data

机译:基于微博位置签到数据的个人社会关系研究

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A method for personal social relations research has been proposed in this paper, which is based on the Sina Weibo micro-blogging location check-in data. A framework of mining technology has been designed to analyze the similarities between users by using the spatial and temporal characteristics of their trajectories, which are represented by the Sina Weibo location check-in data. The “user-active areas” are extracted from the weibo location check-in data in order to establish a space vector for each user, on the basis of which the social relations among users could be mined by the similarity of users' space vectors. Experiments have been conducted to evaluate the proposed method by using the geo location check-in data for Wuhan City. The results show that the method is able to realize friend validation and friend recommendations reliably. It also provides a reference for building social relationship under the Mobile Internet.
机译:本文提出了一种基于新浪微博微博位置签到数据的个人社会关系研究方法。设计了一个挖掘技术框架,以利用用户轨迹的时空特征来分析用户之间的相似性,这些特征以新浪微博位置签到数据为代表。从微博位置登记数据中提取“用户活动区域”,以便为每个用户建立空间矢量,在此基础上,可以通过用户空间矢量的相似性挖掘用户之间的社会关系。通过使用武汉市的地理位置检查数据,进行了实验,以评估该方法的有效性。结果表明,该方法能够可靠地实现好友验证和好友推荐。它还为在移动互联网下建立社会关系提供了参考。

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