启发式
拨款
感知
领域(数学)
价值(数学)
心理学
计算机科学
认知
社会心理学
人工智能
认知心理学
认识论
机器学习
数学
操作系统
哲学
神经科学
纯数学
作者
Upol Ehsan,Samir Passi,Q. Vera Liao,Larry Chan,I-Hsiang Lee,Michael Müller,Mark Riedl
标识
DOI:10.1145/3613904.3642474
摘要
Explainability of AI systems is critical for users to take informed actions. Understanding who opens the black-box of AI is just as important as opening it. We conduct a mixed-methods study of how two different groups—people with and without AI background—perceive different types of AI explanations. Quantitatively, we share user perceptions along five dimensions. Qualitatively, we describe how AI background can influence interpretations, elucidating the differences through lenses of appropriation and cognitive heuristics. We find that (1) both groups showed unwarranted faith in numbers for different reasons and (2) each group found value in different explanations beyond their intended design. Carrying critical implications for the field of XAI, our findings showcase how AI generated explanations can have negative consequences despite best intentions and how that could lead to harmful manipulation of trust. We propose design interventions to mitigate them.
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