Recommender systems (RSs) aim to help users to effectively retrieve items of their interests from a large catalogue. For a quite long period of time, researchers and practitioners have been focusing on developing accurate RSs. Recent years have witnessed an increasing number of threats to RSs, coming from attacks, system and user generated noise, system bias. As a result, it has become clear that a strict focus on RS accuracy is limited and the research must consider other important factors, e.g., trustworthiness. For end users, a trustworthy RS (TRS) should not only be accurate, but also transparent, unbiased and fair as well as robust to noise or attacks. These observations actually led to a paradigm shift of the research on RSs: from accuracy-oriented RSs to TRSs. However, researchers lack a systematic overview and discussion of the literature in this novel and fast developing field of TRSs. To this end, in this paper, we provide an overview of TRSs, including a discussion of the motivation and basic concepts of TRSs, a presentation of the challenges in building TRSs, and a perspective on the future directions in this area. We also provide a novel conceptual framework to support the construction of TRSs.
翻译:咨询系统(RS)旨在帮助用户有效地从大目录中检索他们感兴趣的项目。在相当长的一段时间里,研究人员和从业者一直侧重于发展准确的RS。近年来,由于攻击、系统和用户产生的噪音、系统偏向,对RS的威胁越来越多。结果,人们已经清楚,严格关注RS的准确性是有限的,研究必须考虑其他重要因素,例如信任性。对于终端用户来说,可靠的RS(TRS)不仅应该准确,而且应该透明、公正和公正,并且对噪音或攻击具有强大力。这些观察实际上导致了RS研究的范式转变:从注重准确的RS到TRS。然而,研究人员缺乏对TRS这个新颖和迅速发展的领域的文献的系统化概述和讨论。为此,我们提供了对TRS的概况,包括讨论TRS的动机和基本概念,介绍在建立TRS方面面临的挑战,以及对该领域未来方向的看法。我们还提供了支持建立TRS的新概念框架。