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GeoSRS: A hybrid social recommender system for geolocated data

机译:GeoSRS:用于地理位置数据的混合社交推荐系统

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摘要

We present GeoSRS, a hybrid recommender system for a popular location-based social network (LBSN), in which users are able to write short reviews on the places of interest they visit. Using state-of-the-art text mining techniques, our system recommends locations to users using as source the whole set of text reviews in addition to their geographical location. To evaluate our system, we have collected our own data sets by crawling the social network Foursquare. To do this efficiently, we propose the use of a parallel version of the Quadtree technique, which may be applicable to crawling/exploring other spatially distributed sources. Finally, we study the performance of GeoSRS on our collected data set and conclude that by combining sentiment analysis and text modeling, GeoSRS generates more accurate recommendations. The performance of the system improves as more reviews are available, which further motivates the use of large-scale crawling techniques such as the Quadtree. (C) 2015 Elsevier Ltd. All rights reserved.
机译:我们介绍了GeoSRS,这是一个流行的基于位置的社交网络(LBSN)的混合推荐系统,用户可以在其中写下他们所访问的景点的简短评论。我们的系统使用最先进的文本挖掘技术,向用户推荐使用地理位置以及整个文本评论集作为源的用户位置。为了评估我们的系统,我们通过搜寻社交网络Foursquare收集了自己的数据集。为了有效地做到这一点,我们建议使用四叉树技术的并行版本,该技术可能适用于爬网/探索其他空间分布的源。最后,我们在收集的数据集上研究了GeoSRS的性能,并得出结论,通过结合情感分析和文本建模,GeoSRS可以生成更准确的建议。随着更多评论的出现,系统的性能也随之提高,这进一步激发了诸如Quadtree之类的大规模爬网技术的使用。 (C)2015 Elsevier Ltd.保留所有权利。

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