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Fused Collaborative Filtering With User Preference, Geographical and Social Influence for Point of Interest Recommendation

机译:融合了用户偏好,地理位置和社会影响力的协同过滤,以推荐兴趣点

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摘要

Point of interest (POI) recommendation is a significant task in location-based social networks (LBSNs), e.g., Foursquare, Brightkite. It helps users explore the surroundings and help POI owners increase income. While several researches have been proposed for the recommendation services, it lacks integrated analysis on POI recommendation. In this article, the authors propose a unified recommendation framework, which fuses personalized user preference, geographical influence, and social reputation. The TF-IDF method is adopted to measure the interest level and contribution of locations when calculating the similarity between users. Geographical influence includes geographical distance and location popularity. The authors find friends in Brightkite share low common visited POIs. It means friends' interests may vary greatly. Instead of directly getting recommendations from so-called friends in LBSN, the users attain recommendation from others according to their reputation. Finally, experimental results on real-world dataset demonstrate that the proposed method performs much better than other recommendation methods.
机译:兴趣点(POI)推荐是基于位置的社交网络(LBSN)(例如Foursquare,Brightkite)中的一项重要任务。它可以帮助用户探索周围环境,并帮助POI所有者增加收入。虽然已经提出了一些针对推荐服务的研究,但是缺乏对POI推荐的综合分析。在本文中,作者提出了一个统一的推荐框架,该框架融合了个性化的用户偏好,地理影响力和社会声誉。在计算用户之间的相似度时,采用TF-IDF方法来测量兴趣水平和位置的贡献。地理影响包括地理距离和位置受欢迎程度。作者发现,Brightkite的朋友共享的低访问量POI。这意味着朋友的兴趣可能相差很大。用户不是直接从LBSN中的所谓朋友那里获得推荐,而是根据他们的声誉从其他人那里获得推荐。最后,在真实数据集上的实验结果表明,所提出的方法比其他推荐方法具有更好的性能。

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