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Trust enabled Argumentation Based Recommender System

机译:基于信任的论据推荐系统

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The goal of Recommender Systems (RSs) is to help users to deal with the problem of information overload by facilitating access to relevant items that are valuable to them. If the recommended items match the user preferences, user trust in the system increases and the user start liking the system and uses it more frequently. Trust enabled Argumentation Based Recommender System (TABRS) designed and developed in this paper recommends items of interest to the user by using a hybrid approach for recommendation. These recommendations are further improved using argumentation to convince users about the product. TABRS is an agent- based recommender system that takes into account user's changing preferences to generate interesting recommendations. TABRS combines hybrid recommender system with automated argumentation between agents. The system also improves recommendation repair activity by discovering interesting alternatives based on user's underlying mental attitudes. We implemented the system using Jason for building agents enabled with inference and interaction capabilities. The experimental study is conducted for a Book Recommender System and performance of the proposed system is evaluated using precision and recall metrics.
机译:推荐系统(RSs)的目标是通过促进对用户有价值的相关项目的访问来帮助用户解决信息过载的问题。如果推荐的项目与用户首选项匹配,则用户对系统的信任度会增加,并且用户会开始喜欢该系统并更加频繁地使用它。本文设计和开发的基于信任的基于议事的推荐系统(TABRS)通过使用混合方法进行推荐来推荐用户感兴趣的项目。通过使用说服用户说服产品进一步完善了这些建议。 TABRS是基于代理的推荐系统,它考虑了用户不断变化的首选项以生成有趣的推荐。 TABRS将混合推荐系统与座席之间的自动论证相结合。该系统还通过基于用户潜在的心理态度发现有趣的替代方案来改善推荐维修活动。我们使用Jason实施了该系统,以构建具有推理和交互功能的代理。对Book Recommender系统进行了实验研究,并使用精确度和召回率指标评估了所提出系统的性能。

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