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A collaborative filtering recommendation algorithm based on user clustering and Slope One scheme

机译:基于用户聚类和Slope One方案的协同过滤推荐算法

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Recommendation system has been widely used in electronic commerce, news, web2.0, E-Iearning and other fields. Collaborative filtering is one of the most important algorithms. But as scale of recommendation system continues to expand, more and more problems appear. Data sparsity and poor prediction are main problems that recommendation system has to face. To improve the quality and performance, a new collaborative filtering recommendation algorithm combining user-clustering and Slope One algorithm is proposed. In our algorithm, users were clustered into several classes based on users' rating on items; therefore the useless information was filtered. Then the slope-one scheme was applied to predict the object rating. The experiments were applied to the MovieLens dataset to exploit the benefits of our detector and the experiment results show that the accuracy of our algorithm is in advance of previous research.
机译:推荐系统已广泛应用于电子商务,新闻,web2.0,电子学习等领域。协同过滤是最重要的算法之一。但是随着推荐系统规模的不断扩大,出现了越来越多的问题。数据稀疏性和不良的预测是推荐系统必须面对的主要问题。为了提高质量和性能,提出了一种结合用户聚类和Slope One算法的协同过滤推荐算法。在我们的算法中,根据用户对项目的评分,将用户分为几类;因此,无用的信息被过滤掉了。然后应用斜率一方案来预测物体等级。将实验应用于MovieLens数据集,以利用我们的检测器的优势,实验结果表明,我们算法的准确性优于先前的研究。

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