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Social-Based Collaborative Recommendation: Bees Swarm Optimization Based Clustering Approach

机译:基于社会的协作推荐:基于蜂群优化的聚类方法

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This paper focuses on the recommendation of items in social networks, through which the social information is formalized and combined with the collaborative filtering algorithm using an optimized clustering method. In this approach, users are clustered from the views of both user similarity and trust relationships. A Bees Swarm optimization algorithm is designed to optimize the clustering process and therefore recommend the most appropriate items to a given user. Extensive experiments have been conducted, using the well-known Epinions dataset, to demonstrate the effectiveness of the proposed approach compared to the traditional recommendation algorithms.
机译:本文重点介绍社交网络中的项目推荐,通过社交网络形式化社交信息,并将其与使用优化聚类方法的协同过滤算法相结合。在这种方法中,用户是从用户相似性和信任关系的角度来聚类的。 Bees Swarm优化算法旨在优化聚类过程,因此向给定的用户推荐最合适的项目。使用众所周知的Epinions数据集进行了广泛的实验,以证明与传统推荐算法相比,该方法的有效性。

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