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Examining place categories for link prediction in Location Based Social Networks

机译:在基于位置的社交网络中检查场所类别以进行链接预测

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The day mankind met with smartphones, a new era started. Since then, daily mobile internet usage rates are increasing everyday and people have developed new habits like frequently sharing information (photo, video, location, etc.) on online social networks. Location Based Social Networks (LBSNs) are the platforms that empowers users to share place/location information with friends. As all other social networks, LBSNs aim to acquire more users with a smart friend recommendation. Solution for smart friend recommendation problem is studied under link prediction field by researchers. Check-in information is the main data for link prediction in LBSNs. Data extracted from check-in information plays vital role for predictor performance. In this study, we attempt to make use of detailed analysis of place category in order to exploit possible information gain enhancements through such semantic information. We proposed two new feature groups; Common Place Check-in Count Product Sum and Common Category Check-in Count Sum Product. For any link candidate pair; those features are calculated for each category. Use of new features improved the link prediction performance for multiple data subsets.
机译:人类与智能手机相遇的那一天,一个新时代开始了。从那时起,每天的移动互联网使用率每天都在增加,人们养成了新的习惯,例如在在线社交网络上频繁共享信息(照片,视频,位置等)。基于位置的社交网络(LBSN)是使用户能够与朋友共享位置/位置信息的平台。与所有其他社交网络一样,LBSN的目标是通过明智的朋友推荐来吸引更多用户。研究人员在链接预测领域研究了智能朋友推荐问题的解决方案。签入信息是LBSN中链路预测的主要数据。从签入信息中提取的数据对于预测器性能起着至关重要的作用。在这项研究中,我们试图利用对地点类别的详细分析,以便通过这种语义信息来利用可能的信息获取增强。我们提出了两个新的功能组;公用场所签到计数乘积和和公用类别签到计数乘积。对于任何候选链接对;这些功能是针对每个类别计算的。使用新功能改善了多个数据子集的链接预测性能。

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