How was my performance? Exploring the role of anchoring bias in AI-assisted decision making

IF 20.1 1区 管理学 Q1 INFORMATION SCIENCE & LIBRARY SCIENCE
Lemuria Carter , Dapeng Liu
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引用次数: 0

Abstract

Organizations leverage artificial intelligence (AI) to analyze data and support decision making. However, the integration of AI into organizational workflows may introduce unintended biases. Despite the proliferation of AI in organizations, no study to date has juxtaposed the impact of human and AI recommendations on decision making. Using two controlled experiments of 775 managers, we explore the impact of AI and cognitive bias on performance appraisal ratings. In particular, we examine anchoring and adjustment bias and present an effective strategy for mitigating this bias. The findings show managers’ performance ratings are impacted by the presence of an AI recommendation. The source of the recommendation (human or AI) interacted with the anchor (high or low) to influence managers’ rating. In particular, a high-anchor produced different performance ratings for each source. However, when exposed to a low-anchor, supervisors did not produce varied estimates from AI and non-AI recommendations. These findings suggest managers should be aware of the differential effects of anchoring and adjustment bias on organizational decisions. An employee’s performance may be rated differently, not because of the employee’s behavior, but because of the source of the recommendation and the magnitude of the anchor. This paper makes several significant contributions: (1) it is among the first studies to empirically test the presence and salience of anchoring bias in AI-assisted decision making; (2) it presents the consider-the-opposite strategy as an approach to effectively debias the anchoring effects of AI recommendations.
我的表现如何?探讨锚定偏见在人工智能辅助决策中的作用
组织利用人工智能(AI)来分析数据并支持决策。然而,将人工智能集成到组织工作流程中可能会引入意想不到的偏见。尽管人工智能在组织中扩散,但迄今为止还没有研究将人类和人工智能建议对决策的影响并置。通过对775名管理者的两个对照实验,我们探讨了人工智能和认知偏见对绩效评估评级的影响。特别是,我们检查锚定和调整偏差,并提出减轻这种偏差的有效策略。研究结果表明,人工智能推荐的存在会影响管理者的绩效评级。推荐的来源(人类或人工智能)与锚(高或低)交互,以影响经理的评级。特别是,高锚为每个来源产生了不同的性能评级。然而,当暴露于低锚时,主管并没有根据人工智能和非人工智能的建议产生不同的估计。这些发现表明管理者应该意识到锚定偏差和调整偏差对组织决策的不同影响。员工的表现可能会有不同的评价,不是因为员工的行为,而是因为推荐的来源和锚的大小。本文有几个重要贡献:(1)它是第一批实证检验锚定偏差在人工智能辅助决策中的存在和显著性的研究之一;(2)它提出了相反考虑策略,作为一种有效消除人工智能推荐的锚定效应的方法。
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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来源期刊
International Journal of Information Management
International Journal of Information Management INFORMATION SCIENCE & LIBRARY SCIENCE-
CiteScore
53.10
自引率
6.20%
发文量
111
审稿时长
24 days
期刊介绍: The International Journal of Information Management (IJIM) is a distinguished, international, and peer-reviewed journal dedicated to providing its readers with top-notch analysis and discussions within the evolving field of information management. Key features of the journal include: Comprehensive Coverage: IJIM keeps readers informed with major papers, reports, and reviews. Topical Relevance: The journal remains current and relevant through Viewpoint articles and regular features like Research Notes, Case Studies, and a Reviews section, ensuring readers are updated on contemporary issues. Focus on Quality: IJIM prioritizes high-quality papers that address contemporary issues in information management.
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