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Application of Similarity Metrics in Collaborative Filtering Based Recommendation Systems

机译:相似度量在基于协同过滤的推荐系统中的应用

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This paper explores the ways in which various similarity metrics can be applied in recommendation systems in machine learning that are based on collaborative filtering. It examines properties of different similarity metrics often found in recommendation systems and presents findings of tests done on data sets of different sizes and data properties where these metrics were applied. The findings presented in this paper give guidance for the appropriate application of similarity metrics in machine learning and specifically recommendation systems based on collaborative filtering.
机译:本文探讨了在基于协作过滤的机器学习推荐系统中可以应用各种相似性度量的方式。它检查了推荐系统中经常发现的不同相似性指标的属性,并介绍了对不同大小的数据集和应用了这些指标的数据属性进行测试的结果。本文提出的发现为机器学习中相似性度量的适当应用提供了指导,特别是基于协作过滤的推荐系统。

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