The Role of Domain Expertise in User Trust and the Impact of First Impressions with Intelligent Systems

Mahsan Nourani, J. King, E. Ragan
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引用次数: 59

Abstract

Domain-specific intelligent systems are meant to help system users in their decision-making process. Many systems aim to simultaneously support different users with varying levels of domain expertise, but prior domain knowledge can affect user trust and confidence in detecting system errors. While it is also known that user trust can be influenced by first impressions with intelligent systems, our research explores the relationship between ordering bias and domain expertise when encountering errors in intelligent systems. In this paper, we present a controlled user study to explore the role of domain knowledge in establishing trust and susceptibility to the influence of first impressions on user trust. Participants reviewed an explainable image classifier with a constant accuracy and two different orders of observing system errors (observing errors in the beginning of usage vs. in the end). Our findings indicate that encountering errors early-on can cause negative first impressions for domain experts, negatively impacting their trust over the course of interactions. However, encountering correct outputs early helps more knowledgable users to dynamically adjust their trust based on their observations of system performance. In contrast, novice users suffer from over-reliance due to their lack of proper knowledge to detect errors.
领域专业知识在用户信任中的作用以及智能系统第一印象的影响
特定领域的智能系统旨在帮助系统用户进行决策。许多系统旨在同时支持具有不同领域专业知识水平的不同用户,但是先前的领域知识会影响用户对检测系统错误的信任和信心。虽然我们也知道用户信任会受到智能系统的第一印象的影响,但我们的研究探讨了在智能系统中遇到错误时排序偏见和领域专业知识之间的关系。在本文中,我们提出了一项控制用户研究,探讨领域知识在建立信任中的作用以及对第一印象对用户信任影响的敏感性。参与者回顾了一个可解释的图像分类器,具有恒定的精度和两种不同的观察系统错误的顺序(在使用开始时观察错误与在使用结束时观察错误)。我们的研究结果表明,早期遇到错误会给领域专家带来负面的第一印象,在互动过程中对他们的信任产生负面影响。然而,尽早遇到正确的输出有助于更有知识的用户根据他们对系统性能的观察动态调整他们的信任。相比之下,新手用户由于缺乏检测错误的适当知识而遭受过度依赖。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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