可解释性增强了智能代理的信任弹性。

IF 3.2 2区 心理学 Q1 PSYCHOLOGY, MULTIDISCIPLINARY
Min Xu, Yiwen Wang
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引用次数: 0

摘要

尽管基于人工智能(AI)的系统通常优于人类决策者,但它们也难免出错,从而导致用户对其失去信任,并降低再次使用它们的可能性--这种现象被称为算法厌恶(algorithm aversion)。本研究的目的是探讨可解释人工智能(XAI)能否作为一种可行的策略来对抗算法厌恶。我们进行了两项实验,研究当基于人工智能的系统出现错误时,XAI 如何影响用户继续使用这些系统的意愿。结果表明,在观察到算法出错后,与出错前相比,用户将决策权委托给智能代理或听从智能代理建议的意愿明显下降。然而,可解释性有效地缓解了这种下降趋势,在看到算法出错后,XAI条件下的用户比非XAI条件下的用户更有可能在后续任务中继续使用智能代理。我们还进一步发现,可解释性可以减少用户的决策遗憾,而决策遗憾的减少在可解释性和重复使用行为之间起到了中介作用。这些发现强调了XAI在不完善的人工智能环境下减轻用户负面体验和维护用户信任的适应功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Explainability increases trust resilience in intelligent agents.

Even though artificial intelligence (AI)-based systems typically outperform human decision-makers, they are not immune to errors, leading users to lose trust in them and be less likely to use them again-a phenomenon known as algorithm aversion. The purpose of the present research was to investigate whether explainable AI (XAI) could function as a viable strategy to counter algorithm aversion. We conducted two experiments to examine how XAI influences users' willingness to continue using AI-based systems when these systems exhibit errors. The results showed that, following the observation of algorithms erring, the inclination of users to delegate decisions to or follow advice from intelligent agents significantly decreased compared to the period before the errors were revealed. However, the explainability effectively mitigated this decline, with users in the XAI condition being more likely to continue utilizing intelligent agents for subsequent tasks after seeing algorithms erring than those in the non-XAI condition. We further found that the explainability could reduce users' decision regret, and the decrease in decision regret mediated the relationship between the explainability and re-use behaviour. These findings underscore the adaptive function of XAI in alleviating negative user experiences and maintaining user trust in the context of imperfect AI.

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来源期刊
British journal of psychology
British journal of psychology PSYCHOLOGY, MULTIDISCIPLINARY-
CiteScore
7.60
自引率
2.50%
发文量
67
期刊介绍: The British Journal of Psychology publishes original research on all aspects of general psychology including cognition; health and clinical psychology; developmental, social and occupational psychology. For information on specific requirements, please view Notes for Contributors. We attract a large number of international submissions each year which make major contributions across the range of psychology.
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