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A comprehensive approach towards user-based collaborative filtering recommender system

机译:一种基于用户的协作过滤推荐系统的综合方法

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Recommender system refers to an information system that predicts the intuition of user observing behavior of all the users. The idea of collaborative filtering lies in producing a set of recommendations based on similarity as well as knowledge of users' relationships to items. In this paper, we combine some traditional similarity metrics to find three types of similar users which are super similar, super dissimilar and average similar. We also introduce a new similarity metric which is used in case of average similar user pairs effectively. Finally we evaluate the proposed method for recommendation by experimenting with real data of Movielens as well as Epinions. Thus we can conclude that our proposed similarity metric paves the way to take a comprehensive approach towards user-based collaborative filtering recommender system and performs better than other traditional similarity metrics.
机译:推荐系统是指预测用户观察所有用户行为的直觉的信息系统。协作过滤的思想在于根据相似性以及用户与项目之间的关系的知识来生成一组建议。在本文中,我们结合了一些传统的相似性度量标准来找到三种类型的相似用户:超级相似,超级不同和平均相似。我们还介绍了一种新的相似性指标,该指标可有效地用于平均相似用户对的情况。最后,我们通过对Movielens和Epinions的真实数据进行实验,评估了建议的推荐方法。因此,我们可以得出结论,我们提出的相似性度量为为基于用户的协作过滤推荐系统采取综合方法铺平了道路,并且比其他传统相似性度量表现更好。

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