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Topic-level Trust in Recommender Systems

机译:推荐系统中的主题级别信任

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摘要

Recommender systems have been widely used in helping people deal with information overload. In addition to traditional popular collaborative filtering recommender technology, recent research has shown that incorporating trust and reputation models into the recommendation process can have a positive impact on the accuracy and robustness of recommendations. Previous work related to trust in recommender systems has focused on profile-level trust model. In this paper we argue that items belonging to different topics need different trustworthy users to make recommendation, so topic-level trust will be more effective than profile-level trust in incorporating into the recommendation process. Based on this idea, we design a topic-level trust model which helps a user to quantify the trustworthy degree on a specific topic, and propose a new recommender algorithm by incorporating the new model into the mechanics of a standard collaborative filtering recommender system. The results from experiments based on Movielens dataset show that the new method can improve the recommendation accuracy of recommender systems.
机译:推荐系统已广泛用于帮助人们处理信息过载。除了传统的流行协作过滤推荐技术外,最近的研究表明,将信任和声誉模型纳入推荐过程中可能对建议的准确性和稳健性产生积极影响。与推荐系统的信任相关的以前的工作都集中在个人资料级信任模型上。在本文中,我们认为属于不同主题的物品需要不同的值得信赖的用户来提出推荐,因此主题级别信任将比结合到推荐过程中的配置文件级信任更有效。基于这种想法,我们设计了一个主题级信任模型,帮助用户量化特定主题的可信赖程度,并通过引入新的模型转换成标准的协同过滤推荐系统的结构提出新的推荐算法。基于Movielens数据集的实验结果表明,新方法可以提高推荐系统的推荐准确性。

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