Trust is long recognized to be an important factor in Recommender Systems (RS). However, there are different perspectives on trust and different ways to evaluate it. Moreover, a link between trust and transparency is often assumed but not always further investigated. In this paper we first go through different understandings and measurements of trust in the AI and RS community, such as demonstrated and perceived trust. We then review the relationsships between trust and transparency, as well as mental models, and investigate different strategies to achieve transparency in RS such as explanation, exploration and exploranation (i.e., a combination of exploration and explanation). We identify a need for further studies to explore these concepts as well as the relationships between them.
翻译:信任一直被认为是推荐系统中的重要因素。然而,对于信任有不同的观点和评估方法。此外,信任与透明度之间的关系经常被认为是存在的,但并没有经过深入的研究。在本文中,我们首先介绍了 AI 和推荐系统社区中不同的信任理解和评估方法,如表现出的信任和感知到的信任等。然后,我们回顾了信任和透明度之间的关系,以及心理模型,并调查了实现推荐系统透明度的不同策略,如解释、探索和探索式解释(即探索和解释的结合)。我们发现需要进一步研究这些概念及其之间的关系。