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A study of neighbour selection strategies for POI recommendation in LBSNs

机译:LBSN的POI推荐邻居选择策略研究

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摘要

Location-based recommender systems (LBRSs) are gaining importance with the proliferation of location-based services provided by mobile devices as well as user-generated content in social networks. Collaborative approaches for recommendation rely on the opinions of like-minded people, so-called neighbours, for prediction. Thus, an adequate selection of such neighbours becomes essential for achieving good prediction results. The aim of this work is to explore different strategies to select neighbours in the context of a collaborative filtering-based recommender system for POI (places of interest) recommendations. Whereas standard methods are based on user similarity to delimit a neighbourhood, in this work several strategies are proposed based on direct social relationships and geographical information extracted from location-based social networks (LBSNs). The impact of the different strategies proposed has been evaluated and compared against the traditional collaborative filtering approach using a dataset from a popular network as Foursquare. In general terms, the proposed strategies for selecting neighbours based on the different elements available in a LBSN achieve better results than the traditional collaborative filtering approach. Our findings can be helpful both to researchers in the recommender systems area and to recommender system developers in the context of LBSNs, since they can take into account our results to design and provide more effective services considering the huge amount of knowledge produced in LBSNs.
机译:随着移动设备提供的基于位置的服务以及社交网络中用户生成的内容的激增,基于位置的推荐系统(LBRS)变得越来越重要。推荐的协作方法依靠志趣相投的人(即所谓的邻居)的意见进行预测。因此,对这样的邻居的适当选择对于获得良好的预测结果变得至关重要。这项工作的目的是在基于协作过滤的POI(景点推荐)推荐系统的背景下,探索选择邻居的不同策略。尽管标准方法是基于用户相似性来划定一个街区的,但是在这项工作中,基于直接社交关系和从基于位置的社交网络(LBSN)中提取的地理信息,提出了几种策略。已对提出的不同策略的影响进行了评估,并将其与传统协作过滤方法(使用来自流行网络(Foursquare)的数据集)进行了比较。一般而言,与传统的协作过滤方法相比,所提出的基于LBSN中可用的不同元素选择邻居的策略可获得更好的结果。我们的发现对推荐系统领域的研究人员和LBSN上下文中的推荐系统开发人员都将有所帮助,因为考虑到LBSN产生的大量知识,他们可以考虑我们的结果来设计和提供更有效的服务。

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