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首页> 外文期刊>Journal of information and computational science >Collaborative Filtering Algorithm Incorporated with Cluster-based Expert Selection
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Collaborative Filtering Algorithm Incorporated with Cluster-based Expert Selection

机译:基于聚类专家选择的协同过滤算法

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摘要

In order to solve the scalability and the noise problems suffered by collaborative filtering algorithm, the researchers have proposed expert-based collaborative filtering algorithm. But, there still lacks a principled model for guiding how to select the useful experts. In this paper, firstly, we define a concept of expert which can be reduced into two components: the activity and the influence in a given domain. Secondly, we put forward cluster-based expert selection method. Thirdly, we introduce this method into expert-based collaborative filtering algorithm and propose collaborative filtering algorithm incorporated with cluster-based expert selection. Finally, experiments show that our algorithm has better performance than the existing expert-based collaborative filtering algorithm on recommendation precision (about 12% improvement) and predication accuracy (about 1.8% improvement).
机译:为了解决协同过滤算法的可扩展性和噪声问题,研究人员提出了一种基于专家的协同过滤算法。但是,仍然缺乏指导如何选择有用专家的原则模型。在本文中,首先,我们定义专家的概念,可以将其简化为两个部分:给定领域中的活动和影响。其次,提出了基于聚类的专家选择方法。第三,将这种方法引入基于专家的协同过滤算法中,提出了结合基于聚类的专家选择的协同过滤算法。最后,实验表明,在推荐精度(提高约12%)和预测精度(提高约1.8%)方面,我们的算法比现有的基于专家的协同过滤算法具有更好的性能。

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