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Context-Aware Point of Interest Recommendation using Tensor Factorization

机译:使用张量分解的背景感兴趣的兴趣点

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The wide adoption of Location Based Social Networks along with advances in mobile technology, has brought forth as a core service the analysis of large volumes of location-based data for personalized Point of Interest (POIs) recommendations. The majority of the existing recommendation systems take advantage of Collaborative Filtering, but they fail to exploit the contextual information involved with POI checkins (i.e., POI category, location, or the checkin timestamp). In this paper we propose CoTF, a Context-Aware Point of Interest Recommendation system using Tensor Factorization, that aims at enhancing the user experience by providing personalized context aware POI recommendations. Our approach exploits Category-based context related to checkins without the need of any pre- or post-filtering techniques. Our detailed experimental evaluation using real data from the Foursquare location-based social network illustrates that our approach can efficiently produce personalized recommendations to users, while significantly reducing the training time compared to current state-of-the-art methods.
机译:基于地点的社交网络的广泛采用以及移动技术的进步,并提出了一种核心服务,分析了大量基于位置的地位的数据数据,以进行个性化的兴趣点(POI)的建议。大多数现有推荐系统利用协作过滤,但他们未能利用POI签约涉及的上下文信息(即POI类别,位置或Checkin时间戳)。在本文中,我们提出了一种使用张量分解的COTF,一种环境意识推荐系统,其旨在通过提供个性化的上下文感知POI建议来提高用户体验。我们的方法利用基于类别的上下文与Checkins相关,而无需任何预先过滤技术。我们的详细实验评估使用基于Foursquare位置的社交网络的真实数据说明了我们的方法可以有效地向用户提供个性化建议,同时与当前的最先进的方法相比,显着降低了培训时间。

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