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首页> 外文期刊>ISPRS International Journal of Geo-Information >Context-Aware Group-Oriented Location Recommendation in Location-Based Social Networks
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Context-Aware Group-Oriented Location Recommendation in Location-Based Social Networks

机译:基于位置的社交网络中面向上下文的基于群体的位置推荐

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Location-based social networking services have attracted great interest with the growth of smart mobile devices. Recommending locations for users based on their preferences is an important task for location-based social networks (LBSNs). Since human beings are social by nature, group activities are important in individuals’ lives. Due to the different interests and priorities of individuals, it is difficult to find places that are ideal for all members of a group. In this study, a context-aware group-oriented location recommendation system is proposed based on a random walk algorithm. The proposed approach considers three different contexts, namely users’ contexts (i.e., social relationships, personal preferences), location context (i.e., category, popularity, capacity, and spatial proximity), and environmental context (i.e., weather, day of the week). Three graph models of LBSNs are constructed to perform a random walk with restart (RWR) algorithm in which a user-location graph is considered as the basis. In addition, two group recommendation strategies are used. One is an aggregated prediction strategy, and the other is derived from extending the RWR to the group. After performing the RWR algorithm, the group profile and location popularity are used to improve the effectiveness of the recommendation. The performance of the proposed system is examined using the Gowalla dataset related to the city of London from March 2009 to July 2011. The results indicate that the RWR algorithm outperforms popularity-based, collaborative filtering and content-based filtering. In addition, using the group profile and location popularity significantly improves the accuracy of recommendation. On the user-location graph, the number of users with recommendations matching the test data increases by 1.18 times, while the precision of creating relevant recommendations is increased by 3.4 times.
机译:随着智能移动设备的增长,基于位置的社交网络服务引起了极大的兴趣。根据用户的偏好为用户推荐位置是基于位置的社交网络(LBSN)的一项重要任务。由于人类本质上是社会性的,所以集体活动对个人的生活很重要。由于个人的兴趣和优先级不同,因此很难找到适合团体中所有成员的理想场所。在这项研究中,提出了一种基于上下文感知的面向群组的位置推荐系统,该系统基于随机游走算法。所提出的方法考虑了三种不同的上下文,即用户的上下文(即,社交关系,个人喜好),位置上下文(即,类别,受欢迎程度,容量和空间接近度)以及环境上下文(即,天气,星期几) )。构造了三个LBSN的图形模型以执行带有重新启动的随机行走(RWR)算法,其中以用户位置图形为基础。另外,使用了两个小组推荐策略。一种是聚合的预测策略,另一种是通过将RWR扩展到组而得出的。在执行RWR算法之后,使用组配置文件和位置受欢迎程度来提高推荐的有效性。从2009年3月至2011年7月,使用与伦敦市有关的Gowalla数据集检查了所提出系统的性能。结果表明,RWR算法的性能优于基于流行度的协作过滤和基于内容的过滤。此外,使用群组个人资料和位置人气可以显着提高推荐的准确性。在用户位置图上,具有与测试数据匹配的推荐的用户数量增加了1.18倍,而创建相关推荐的精度增加了3.4倍。

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