Trust, Workload and Performance in Human-AI Partnering: The Role of AI Attributes in Solving Classification Problems

Mostaan Lotfalian Saremi, Isabella Ziv, Onur Asan, A. E. Bayrak
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Abstract

Intelligent systems have been rapidly evolving and play a pivotal role in assisting individuals across diverse domains, from healthcare to transportation. Understanding the dynamics of human-Artificial Intelligence (AI) partnering, particularly how humans trust and collaborate with intelligent systems, is becoming increasingly critical to design effective systems. This paper presents an experimental analysis to assess the impact of AI design attributes on users' trust, workload and performance when solving classification problems supported by an AI assistant. Specifically, we study the effect of transparency, fairness, and robustness in the design of an AI assistant and analyze the role of participants' gender and education background on the outcomes. The experiment is conducted with 47 students in undergraduate, master's and Ph.D. programs using a drawing game application where the users are asked to recognize incomplete sketches revealed progressively while receiving recommendations from multiple versions of an AI assistant. The results show that when collaborating with the AI, participants achieve a higher performance than their individual performance or the performance of the AI. The results also show that gender does not have an impact on users' trust and performance when collaborating with different versions of the AI system, whereas education level has a significant impact on the participants' performance but not on trust. Finally, the impact of design attributes on participants' trust and performance highly depends on the accuracy of the AI recommendations, and improvements in participants' performance and trust in some cases come at the expense of increased workload.
人类与人工智能合作中的信任、工作量和绩效:人工智能属性在解决分类问题中的作用
智能系统一直在快速发展,并在从医疗到交通等不同领域为个人提供帮助方面发挥着举足轻重的作用。了解人类与人工智能(AI)合作的动态,特别是人类如何信任智能系统并与之合作,对于设计有效的系统越来越重要。本文通过实验分析,评估了人工智能设计属性对用户在解决人工智能助手支持下的分类问题时的信任、工作量和性能的影响。具体来说,我们研究了人工智能助手设计中透明度、公平性和鲁棒性的影响,并分析了参与者的性别和教育背景对结果的影响。实验以 47 名本科生、硕士生和博士生为对象,使用一个绘画游戏应用程序,要求用户识别逐步揭示的不完整草图,同时接受多个版本的人工智能助手的建议。结果表明,在与人工智能合作时,参与者的表现高于其个人表现或人工智能的表现。结果还显示,在与不同版本的人工智能系统合作时,性别对用户的信任度和表现没有影响,而教育水平对参与者的表现有显著影响,但对信任度没有影响。最后,设计属性对参与者信任度和绩效的影响在很大程度上取决于人工智能建议的准确性,在某些情况下,参与者绩效和信任度的提高是以工作量的增加为代价的。
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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