AI anxiety: Explication and exploration of effect on state anxiety when interacting with AI doctors

Hyun Yang , S. Shyam Sundar
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Abstract

People often have anxiety toward artificial intelligence (AI) due to lack of transparency about its operation. This study explicates this anxiety by conceptualizing it as a trait, and examines its effect. It hypothesizes that users with higher AI (trait) anxiety would have higher state anxiety when interacting with an AI doctor, compared to those with lower AI (trait) anxiety, in part because it is a deviation from the status quo of being treated by a human doctor. As a solution, it hypothesizes that an AI doctor's explanations for its diagnosis would relieve patients' state anxiety. Furthermore, based on the status quo bias theory and an adaptation of the theory of interactive media effects (TIME) for the study of human-AI interaction (HAII), this study hypothesizes that the affect heuristic triggered by state anxiety would mediate the causal relationship between the source cue of a doctor and user experience (UX) as well as behavioral intentions. A pre-registered 2 (human vs. AI) x 2 (explainable vs. non-explainable) experiment (N = 346) was conducted to test the hypotheses. Data revealed that AI (trait) anxiety is significantly associated with state anxiety. Additionally, data showed that an AI doctor's explanations for its diagnosis significantly reduce state anxiety in patients with high AI (trait) anxiety but increase state anxiety in those with low AI (trait) anxiety, but these effects of explanations are not significant among patients who interact with a human doctor. Theoretical and design implications of these findings and limitations of this study are discussed.
AI焦虑:与AI医生互动时对状态焦虑的影响解释与探索
由于人工智能(AI)的运行不透明,人们经常对其产生焦虑。本研究通过将其概念化为一种特质来解释这种焦虑,并检验其影响。该研究假设,与人工智能(特质)焦虑程度较低的用户相比,人工智能(特质)焦虑程度较高的用户在与人工智能医生互动时,会有更高的状态焦虑,部分原因是它偏离了由人类医生治疗的现状。作为解决方案,它假设人工智能医生对其诊断的解释将缓解患者的状态焦虑。基于现状偏差理论,并将交互媒体效应理论(TIME)应用于人机交互(HAII)研究中,假设状态焦虑触发的情感启发式在医生提示源与用户体验(UX)、行为意向之间的因果关系中起到中介作用。进行了一个预注册的2(人类vs.人工智能)x 2(可解释vs.不可解释)实验(N = 346)来检验假设。数据显示,AI(特质)焦虑与状态焦虑显著相关。此外,数据显示,AI医生对其诊断的解释显著降低了高AI(特质)焦虑患者的状态焦虑,但增加了低AI(特质)焦虑患者的状态焦虑,但这些解释的影响在与人类医生互动的患者中并不显著。讨论了这些发现的理论和设计意义以及本研究的局限性。
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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