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Communication-Based Book Recommendation in Computational Social Systems

机译:基于通信的计算社会系统的书籍推荐

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This paper considers current personalized recommendation approaches based on computational social systems and then discusses their advantages and application environments. The most widely used recommendation algorithm, personalized advice based on collaborative filtering, is selected as the primary research focus. Some improvements in its application performance are analyzed. First, for the calculation of user similarity, the introduction of computational social system attributes can help to determine users’ neighbors more accurately. Second, computational social system strategies can be adopted to penalize popular items. Third, the network community, identity, and trust can be combined as there is a close relationship. Therefore, this paper proposes a new method that uses a computational social system, including a trust model based on community relationships, to improve the user similarity calculation accuracy to enhance personalized recommendation. Finally, the improved algorithm in this paper is tested on the online reading website dataset. The experimental results show that the enhanced collaborative filtering algorithm performs better than the traditional algorithm.
机译:本文考虑了基于计算社会系统的当前个性化推荐方法,然后讨论其优势和应用环境。最广泛使用的推荐算法,基于协作过滤的个性化建议,作为主要研究焦点。分析了其应用程序性能的一些改进。首先,为了计算用户的相似性,推出计算社会系统属性可以帮助更准确地确定用户邻居。其次,可以采用计算社会制度战略来惩罚流行项目。第三,可以将网络社区,身份和信任组合在一起,因为存在密切的关系。因此,本文提出了一种使用计算社会系统的新方法,包括基于社区关系的信任模型,提高用户的相似性计算精度,以增强个性化推荐。最后,在在线阅读网站数据集上测试了本文的改进算法。实验结果表明,增强的协作滤波算法比传统算法更好。

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