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Tag embedding based personalized point of interest recommendation system

机译:基于嵌入的基于个性化的兴趣点推荐系统

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摘要

E-tourism websites such as Foursquare, Tripadvisor, Yelp etc. allow users to rate the preferences for the places they have visited. Along with ratings, the services allow users to provide reviews on social media platforms. As the use of hashtags has been popular in social media, the users may also provide hashtag-like tags to express their opinion regarding some places. In this article, we propose an embedding based venue recommendation framework that represents Point Of Interest (POI) based on tag embedding and models the users (user profile) based on the POIs rated by them. We rank a set of candidate POIs to be recommended to the user based on the cosine similarity between respective user profile and the embedded representation of POIs. Experiments on TREC Contextual Suggestion data empirically confirm the effectiveness of the proposed model. We achieve significant improvement over PK-Boosting and CS-L2Rank, two state-of-the-art baseline methods. The proposed methods improve NDCG@5 by 12.8%, P@5 by 4.4%, and MRR by 7.8% over CS-L2Rank. The proposed methods also minimize the risk of privacy leakage. To verify the overall robustness of the models, we tune the model parameters by discrete optimization over different measures (such as AP, NDCG, MRR, recall, etc.). The experiments have shown that the proposed methods are overall superior than the baseline models.
机译:Foursquare,TripAdvisor,Yelp等电子旅游网站允许用户对他们所访问的地方评分偏好。随着评级,服务允许用户提供社交媒体平台的评论。随着HashTags的使用在社交媒体中受欢迎,用户还可以提供类似的标签,以表达他们有关某些地方的意见。在本文中,我们提出了一种基于基于标签嵌入和模拟了它们的POIS的标签和模拟了用户(用户配置文件)的兴趣点(POI)的嵌入式的场地推荐框架。我们基于各自的用户简档和POI的嵌入式表示,对用户建议向用户进行排名一组候选POI。 TREC上下文建议数据的实验凭经验证明了所提出的模型的有效性。我们通过PK-Boosting和CS-L2RANK,两种最先进的基线方法实现了显着改善。所提出的方法将NDCG @ 5×12.8%,p @ 5分4.4%,MRR在CS-L2RANK上达7.8%。所提出的方法还尽量减少了隐私泄漏的风险。为了验证模型的整体稳健性,我们通过不同措施的离散优化来调整模型参数(例如AP,NDCG,MRR,RECALL等)。实验表明,所提出的方法总体优于基线模型。

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