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Fuzzy Computational Models of Trust and Distrust for Enhanced Recommendations

机译:增强推荐中信任和不信任的模糊计算模型

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摘要

Trust models have received considerable attention in the recent past and have been employed in many of today's most successful recommender systems (RSs) for alleviating sparsity by enhancing their interuser connectivity obtained from historical preference data and to address the cold start problem. However, the incorporation of distrust in addition to trust for improved recommendations has not been analyzed fully because of the absence of publically available data sets containing gradual information about trust and distrust concepts. Our work in this paper is an attempt toward introducing recommendation strategies exploiting both the trust and the distrust in the RSs to further enhance their quality of recommendations through fuzzy computational models for trust and distrust. Since trust and distrust concepts are gradual phenomenon, therefore these can be represented more naturally by fuzzy logic using linguistic expressions. The contributions of this paper are three fold: First, we propose fuzzy computational models for both the trust and distrust concepts through similarity as well as knowledge factors based on linguistic expressions. Second, we suggest appropriate propagation and aggregation operators to deal with the data sparsity. Finally, we present a comparative analysis of proposed recommendation strategies utilizing both the trust and distrust concepts.
机译:信任模型在最近已受到相当大的关注,并已在当今许多最成功的推荐器系统(RS)中使用,它们通过增强从历史偏好数据获得的用户间连接性来缓解稀疏性,并解决了冷启动问题。但是,由于缺乏公开的关于信任和不信任概念的渐进信息的数据集,因此,除了信任之外,还结合了不信任来改进建议。我们在本文中的工作是尝试引入推荐策略,该策略利用RS中的信任和不信任来通过信任和不信任的模糊计算模型进一步提高建议的质量。由于信任和不信任概念是渐进现象,因此可以使用语言表达的模糊逻辑更自然地表示这些概念。本文的贡献包括三个方面:首先,我们通过相似性以及基于语言表达的知识因素,为信任和不信任概念提出了模糊计算模型。其次,我们建议使用适当的传播和聚合运算符来处理数据稀疏性。最后,我们对使用信任和不信任概念的建议策略进行了比较分析。

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  • 来源
    《International Journal of Intelligent Systems》 |2013年第4期|332-365|共34页
  • 作者单位

    School of Computer and Systems Sciences, Jawaharlal Nehru University, New Delhi 110 067, India;

    School of Computer and Systems Sciences, Jawaharlal Nehru University, New Delhi 110 067, India;

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