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A Study of Recommending Locations on Location-Based Social Network by Collaborative Filtering

机译:协同过滤在基于位置的社交网络中推荐位置的研究

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The development of location-based social networking (LBSN) services is growing rapidly these days. Users of LBSN services are more interested in sharing tips and experiences of their visits to various locations. In this paper, we aim at a study of recommending locations to users on LBSNs by collaborative filtering (CF) recommenders based only on users' check-in data. We first design and develop a distributed crawler to collect a large amount of check-in data from Gowalla. Then, we use three ways to utilize the check-in data, namely, the binary utilization, the FIF utilization, and the probability utilization. According to different utilizations, we introduce different CF recommenders, namely, user-based, item-based and probabilistic latent semantic analysis (PLSA), to do the location recommendation. Finally, we conduct a set of experiments to compare the performances of different recommenders using different check-in utilizations. The experimental results show that PLSA recommender with the probability utilization outperforms other combinations of recommenders and utilizations for recommending locations to users on LBSN.
机译:如今,基于位置的社交网络(LBSN)服务的发展正在迅速增长。 LBSN服务的用户对分享访问各个地方的提示和经验更感兴趣。在本文中,我们旨在研究仅基于用户签入数据通过协作过滤(CF)推荐器向LBSN上的用户推荐位置。我们首先设计和开发了一个分布式爬虫,以从Gowalla收集大量的登机数据。然后,我们使用三种方法来利用签入数据,即二进制利用率,FIF利用率和概率利用率。根据不同的用途,我们引入了不同的CF推荐器,即基于用户,基于项目和概率潜在语义分析(PLSA),以进行位置推荐。最后,我们进行了一组实验,以比较使用不同签到使用率的不同推荐者的表现。实验结果表明,具有概率利用率的PLSA推荐程序优于推荐程序和用于向LBSN上的用户推荐位置的利用率的其他组合。

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