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Friend Recommendation Algorithm for Online Social Networks Based on Location Preference

机译:基于位置偏好的在线社交网络的朋友推荐算法

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In recent years, it has become more and more popular to recommend friends on the location-based social network (LBSN), which is combined with the user's behavior in the real world. LBSN has three attributes including temporal, spatial and social correlation. However, the combination situation of the three cannot be solved in previous algorithms. For instance, the problem of recommending friends with similar location preference in real world cannot be solved by the method based on the social network topology or non-topological information (such as user profile). A new approach that recommends friends with similar location preference for LBSN's users is proposed, in which both the online friendship information and the offline user behavior are considered. The theories and methods including Markov chain, cosine similarity based on location clustering and threshold evaluation are used in the proposed approach. Finally, rationality and effectiveness of the algorithm is verified by using a real dataset which is from a LBSN (Gowalla).
机译:近年来,在基于位置的社交网络(LBSN)上推荐朋友已经变得越来越受欢迎,与用户在现实世界中的行为相结合。 LBSN有三个属性,包括时间,空间和社交相关性。然而,在以前的算法中,这三种的组合情况不能解决。例如,基于社交网络拓扑或非拓扑信息(例如用户配置文件)的方法,不能解决建议在现实世界中具有类似位置偏好的朋友的问题。提出了一种推荐具有类似位置优先级的朋友对LBSN的用户的新方法,其中考虑了在线友谊信息和脱机用户行为。基于位置聚类和阈值评估的Markov链,余弦相似理论和方法以提出的方法使用。最后,通过使用来自LBSN(GowAlla)的真实数据集来验证算法的合理性和有效性。

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