适当依赖AI建议:概念化和解释的效果

M. Schemmer, Niklas Kühl, Carina Benz, Andrea Bartos, G. Satzger
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引用次数: 7

摘要

人工智能建议正变得越来越受欢迎,例如在投资和医疗决策方面。由于这些建议通常是不完美的,决策者必须对是否真正遵循这些建议行使自由裁量权:他们必须“适当地”依赖正确的建议,拒绝不正确的建议。然而,目前关于适当依赖的研究仍然缺乏一个共同的定义和一个可操作的测量概念。此外,没有进行深入的行为实验来帮助理解影响这种行为的因素。在本文中,我们提出适当的信赖(AoR)作为一个潜在的,可量化的二维测量概念。我们开发了一个研究模型,分析了为人工智能建议提供解释的效果。在一个有200名参与者的实验中,我们展示了这些解释如何影响AoR,从而影响人工智能建议的有效性。我们的工作为分析依赖行为和人工智能顾问的有目的设计提供了基本概念。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Appropriate Reliance on AI Advice: Conceptualization and the Effect of Explanations
AI advice is becoming increasingly popular, e.g., in investment and medical treatment decisions. As this advice is typically imperfect, decision-makers have to exert discretion as to whether actually follow that advice: they have to “appropriately” rely on correct and turn down incorrect advice. However, current research on appropriate reliance still lacks a common definition as well as an operational measurement concept. Additionally, no in-depth behavioral experiments have been conducted that help understand the factors influencing this behavior. In this paper, we propose Appropriateness of Reliance (AoR) as an underlying, quantifiable two-dimensional measurement concept. We develop a research model that analyzes the effect of providing explanations for AI advice. In an experiment with 200 participants, we demonstrate how these explanations influence the AoR, and, thus, the effectiveness of AI advice. Our work contributes fundamental concepts for the analysis of reliance behavior and the purposeful design of AI advisors.
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