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设计透明度以实现有效的人机协作

Designing Transparency for Effective Human-AI Collaboration

Information Systems Frontiers · 2022
被引 172 · 同刊同年前 8%
ABS 3

中文导读

研究如何通过设计AI系统的透明度来减少人机信息不对称,提升信任和任务效果,并在酒店行业案例中验证了透明度对信任和预测准确性的影响。

Abstract

Abstract The field of artificial intelligence (AI) is advancing quickly, and systems can increasingly perform a multitude of tasks that previously required human intelligence. Information systems can facilitate collaboration between humans and AI systems such that their individual capabilities complement each other. However, there is a lack of consolidated design guidelines for information systems facilitating the collaboration between humans and AI systems. This work examines how agent transparency affects trust and task outcomes in the context of human-AI collaboration. Drawing on the 3-Gap framework, we study agent transparency as a means to reduce the information asymmetry between humans and the AI. Following the Design Science Research paradigm, we formulate testable propositions, derive design requirements, and synthesize design principles. We instantiate two design principles as design features of an information system utilized in the hospitality industry. Further, we conduct two case studies to evaluate the effects of agent transparency: We find that trust increases when the AI system provides information on its reasoning, while trust decreases when the AI system provides information on sources of uncertainty. Additionally, we observe that agent transparency improves task outcomes as it enhances the accuracy of judgemental forecast adjustments.

人工智能信息系统设计人机协作透明度