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Exploring IoT Location Information to Perform Point of Interest Recommendation Engine: Traveling to a New Geographical Region

机译:探索IoT位置信息以执行兴趣点推荐引擎:前往新的地理区域

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摘要

With the development of wireless Internet and the popularity of location sensors in mobile phones, the coupling degree between social networks and location sensor information is increasing. Many studies in the Location-Based Social Network (LBSN) domain have begun to use social media and location sensing information to implement personalized Points-of-interests (POI) recommendations. However, this approach may fall short when a user moves to a new district or city where they have little or no activity history and social network friend information. Thus, a need to reconsider how we model the factors influencing a user’s preferences in new geographical regions in order to make personalized and relevant recommendation. A POI in LBSNs is semantically enriched with annotations such as place categories, tags, tips or user reviews which implies knowledge about the nature of the place as well as a visiting person’s interests. This provides us with opportunities to better understand the patterns in users’ interests and activities by exploiting the annotations which will continue to be useful even when a user moves to unfamiliar places. In this research, we proposed a location-aware POI recommendation system that models user preferences mainly based on user reviews, which shows the nature of activities that a user finds interesting. Using this information from users’ location history, we predict user ratings by harnessing the information present in review text as well as consider social influence from similar user set formed based on matching category preferences and similar reviews. We use real data sets partitioned by city provided by Yelp, to compare the accuracy of our proposed method against some baseline POI recommendation algorithms. Experimental results show that our algorithm achieves a better accuracy.
机译:随着无线互联网的发展以及位置传感器在手机中的普及,社交网络与位置传感器信息之间的耦合度越来越高。基于位置的社交网络(LBSN)领域中的许多研究已开始使用社交媒体和位置感测信息来实现个性化的兴趣点(POI)建议。然而,当用户移动到他们几乎没有或没有活动历史和社交网络朋友信息的新地区或城市时,这种方法可能无法实现。因此,有必要重新考虑我们如何在新的地理区域中建模影响用户偏好的因素,以便做出个性化且相关的推荐。 LBSN中的POI在语义上充斥着注释,例如地点类别,标签,提示或用户评论,这些注释暗示了有关地点性质以及来访者兴趣的知识。通过利用注释,这为我们提供了更好地理解用户兴趣和活动模式的机会,即使用户移到不熟悉的地方,注释也将继续有用。在这项研究中,我们提出了一种位置感知的POI推荐系统,该系统主要基于用户评论对用户的偏好进行建模,从而显示用户发现有趣的活动的性质。利用来自用户位置历史记录的信息,我们可以利用评论文本中显示的信息来预测用户评分,并考虑来自基于匹配类别偏好和相似评论而形成的相似用户集的社会影响力。我们使用Yelp提供的按城市划分的真实数据集,将我们提出的方法与一些基准POI推荐算法的准确性进行比较。实验结果表明,该算法取得了较好的精度。

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