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A model to represent users trust in recommender systems using ontologies and fuzzy linguistic modeling

机译:使用本体和模糊语言建模来表示用户对推荐系统信任的模型

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Recommender systems evaluate and filter the vast amount of information available on the Web, so they can be used to assist users in the process of accessing to relevant information. In the literature we can find countless approaches for generating personalized recommendations and all of them make use of different users' and/or items' features. In this sense, building accurate profiles plays an essential role in this context making the system's success depend to a large extent on the ability of the learned profiles to represent the user's preferences and needs. An ontology works very well to characterize the users profiles involved in the process of generating recommendations. In this paper we develop an ontology to characterize the trust between users using the fuzzy linguistic modeling, so that in the recommendation generation process we do not take into account users with similar ratings history but users in which each user can trust. We present our ontology and provide a method to aggregate the trust information captured in the trust-ontology and to update the user profiles based on the feedback. (c) 2015 Elsevier Inc. All rights reserved.
机译:推荐系统评估和过滤Web上可用的大量信息,因此它们可用于协助用户访问相关信息。在文献中,我们可以找到无数种生成个性化推荐的方法,并且所有方法都利用了不同用户和/或项目的功能。从这个意义上讲,建立准确的配置文件在此方面起着至关重要的作用,这使得系统的成功在很大程度上取决于学习到的配置文件代表用户偏好和需求的能力。本体可以很好地描述生成建议过程中涉及的用户个人资料。在本文中,我们开发了一种本体论,以使用模糊语言建模来表征用户之间的信任,因此在推荐生成过程中,我们不会考虑具有相似评级历史的用户,而是会考虑每个用户可以信任的用户。我们介绍了本体,并提供了一种方法来聚合在信任本体中捕获的信任信息,并根据反馈更新用户配置文件。 (c)2015 Elsevier Inc.保留所有权利。

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