Explanations are used in recommender systems for various reasons. Users have to be supported in making (high-quality) decisions more quickly. Developers of recommender systems want to convince users to purchase specific items. Users should better understand how the recommender system works and why a specific item has been recommended. Users should also develop a more in-depth understanding of the item domain. Consequently, explanations are designed in order to achieve specific \emph{goals} such as increasing the transparency of a recommendation or increasing a user's trust in the recommender system. In this paper, we provide an overview of existing research related to explanations in recommender systems, and specifically discuss aspects relevant to group recommendation scenarios. In this context, we present different ways of explaining and visualizing recommendations determined on the basis of preference aggregation strategies.
翻译:由于各种原因,建议系统使用解释。在更快地作出(高质量)决定时,必须支持用户。建议系统的开发者希望说服用户购买具体项目。用户应当更好地了解建议系统是如何运作的,为什么建议了具体项目。用户还应当更深入地了解项目领域。因此,解释的设计是为了实现具体的\emph{目标},例如增加建议的透明度或提高用户对建议系统的信任。本文概述了与建议系统的解释有关的现有研究,并具体讨论了与集团建议设想方案相关的方面。在这方面,我们提出了不同的方式解释和直观根据优惠汇总战略确定的建议。