Investigating AI Teammate Communication Strategies and Their Impact in Human-AI Teams for Effective Teamwork

被引:4
|
作者
Zhang R. [1 ]
Duan W. [1 ]
Flathmann C. [1 ]
Mcneese N. [1 ]
Freeman G. [1 ]
Williams A. [1 ]
机构
[1] Clemson University, Clemson, 29634, SC
关键词
communication strategy; human-AI communication; human-AI coordination; human-AI teaming; situation awareness; trust;
D O I
10.1145/3610072
中图分类号
学科分类号
摘要
Recently, AI is integrating into teams to collaborate with humans as a teammate with the goal of achieving unprecedented team outcomes. Much of the coordination between humans and AI teammates relies on human-AI communication, which is challenging due to AI's limitations on natural language communication. Thus, it is essential to identify and develop effective communication strategies for AI teammates in human-AI teams to facilitate the coordination process. Through interviews with 60 participants who collaborated with an AI teammate in a multiplayer online game, in this paper, we explore communication strategies that humans expect AI teammates to apply to support human-AI coordination and collaboration in dyadic teaming environments, and how the AI teammate's communication can impact teaming processes. Our findings highlight four communication strategies AI teammates should apply to support their coordination with humans in dyadic teaming environments. We also find that AI teammates' proactive communication with humans could facilitate the development of human trust and situation awareness, whereas AI lacking such proactive communication is often not perceived as a teammate. Our study extends the current CSCW/HCI research on human-AI communication in teaming environments by shedding light on how communication should be structured in dyadic human-AI teams for effective and smooth collaboration. © 2023 ACM.
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