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Exploiting User Check-In Data for Geo-Friend Recommendations in Location-Based Social Networks

机译:利用基于位置的社交网络的地理朋友建议的用户办理登机数据

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摘要

The development of Web 2.0 technologies has meant that online social networks can both help the public facilitate sharing and communication and help them make new friends through their cyberspace social circles. Generating more accurate and geographically related results to help users find more friends in real life is gradually becoming a research hotspot. Recommending geographically related friends and alleviating check-in data sparsity problems in location-based social networks allows those to divide a day into different time slots and automatically collect user check-in data at each time slot over a certain period. Second, some important location points or regions are extracted from raw check-in trajectories, temporal periodic trajectories are constructed, and a geo-friend recommendation framework is proposed that can help users find geographically related friends. Finally, empirical studies from a real-world dataset demonstrate that this paper's method outperforms other existing methods for geo-friend recommendations in location-based social networks.
机译:Web 2.0技术的开发意味着在线社交网络都可以帮助公众促进分享和沟通,并帮助他们通过他们的网络空间社交圈创建新朋友。生成更准确和地理相关的结果,以帮助用户在现实生活中找到更多朋友正在逐渐成为研究热点。在基于位置的社交网络中推荐地理相关的朋友和减轻登记处的数据稀疏问题允许这些日期分为不同的时隙,并在一定时间内每次插槽自动收集用户登记数据。其次,一些重要的位置点或地区是从原始登记轨迹中提取的,构建了时间周期轨迹,提出了一个地理朋友推荐框架,可以帮助用户找到地理上相关的朋友。最后,来自现实世界数据集的实证研究表明,本文的方法在基于位置的社交网络中优于地理朋友建议的其他现有方法。

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