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Correlation-Based Pre-Filtering for Context-Aware Recommendation

机译:基于相关的上下文知识推荐的预筛

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With the increasing use of connected devices and IoT, users’ contextual information is more and more available and used in different information systems. One of the domains where the use of contextual information is promising is that of recommendation. As a matter of fact, context-aware recommender systems (CARSs) have demonstrated that taking contextual information about users into account can improve the effectiveness of recommendation, by generating more relevant recommendations to the users in their specific contextual situation. In this paper we propose a new context representation and approach to integrate this kind of information into a recommender system. We make a strong representation of the context, based on the influence of context on ratings, calculated using the Pearson Correlation Coefficient. We do a pre-filtering recommendation based on this representation. Our evaluations demonstrate that our approach can outperforms the state of the art.
机译:随着所连接的设备和物联网的使用越来越多,用户的上下文信息越来越多地可用,并用于不同的信息系统。使用上下文信息的域之一是推荐的。事实上,上下文知识的推荐系统(CARS)已经证明,通过在其特定的上下文情况下向用户创造更多相关的建议,采取有关用户的上下文信息可以提高推荐的有效性。在本文中,我们提出了一种新的上下文表示和方法,将这种信息集成到推荐系统中。基于语境对等级的影响,我们利用Pearson相关系数计算的基础上下文的强烈代表性。我们根据此表示,进行预过滤推荐。我们的评估表明,我们的方法可以优于现有技术。

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