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Information theoretic approach for cold start users with diversity improvement technique for semantic recommender system

机译:基于语义推荐系统多样性改进技术的冷启动用户信息理论方法

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This paper aims to use semantic database for recommendation purposes, it deals with two very specific problems of Recommendation System, namely Cold Start user and Diversity. We first describe cold start users and predict recommendation for them using information theory based methods. To introduce serendipitous results we also include aggregate diversity methods to the predicted ratings. Furthermore, we explain the results obtained from the rated items, and also increase the Intra List Diversity using a ranking-based approach that is different from the popularity-based approach employed in the past.
机译:本文旨在将语义数据库用于推荐目的,它涉及推荐系统的两个非常具体的问题,即冷启动用户和多样性。我们首先描述冷启动用户,并使用基于信息论的方法预测对他们的推荐。为了介绍偶然的结果,我们还将聚集多样性方法包括到预测的收视率中。此外,我们解释了从评级项目中获得的结果,并使用与过去采用的基于受欢迎度的方法不同的基于排名的方法来增加列表内多样性。

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