Let's Think Together! Assessing Shared Mental Models, Performance, and Trust in Human-Agent Teams
Beau G. Schelble, Christopher Flathmann, Nathan J. McNeese, Guo Freeman, Rohit Mallick
Proceedings of the ACM on Human-Computer Interaction, 6(GROUP), 1-29 (2022)
Abstract
An emerging research agenda in Computer-Supported Cooperative Work focuses on human-agent teaming and AI agent's roles and effects in modern teamwork. In particular, one understudied key question centers around the construct of team cognition within human-agent teams. This study explores the unique nature of team dynamics in human-agent teams compared to human-human teams and the impact of team composition on perceived team cognition, team performance, and trust. In doing so, a mixed-method approach, including three team composition conditions (all human, human-human-agent, human-agent-agent), completed the team simulation NeoCITIES and completed shared mental model, trust, and perception measures. Results found that human-agent teams are similar to human-only teams in the iterative development of team cognition and the importance of communication to accelerating its development; however, human-agent teams are different in that action-related communication and explicitly shared goals are beneficial to developing team cognition. Additionally, human-agent teams trusted agent teammates less when working with only agents and no other humans, perceived less team cognition with agent teammates than human ones, and had significantly inconsistent levels of team mental model similarity when compared to human-only teams. This study contributes to Computer-Supported Cooperative Work in three significant ways: 1) advancing the existing research on human-agent teaming by shedding light on the relationship between humans and agents operating in collaborative environments, 2) characterizing team cognition development in human-agent teams; and 3) advancing real-world design recommendations that promote human-centered teaming agents and better integrate the two.
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@article{schelble2022lets,
title = {Let's Think Together! Assessing Shared Mental Models, Performance, and Trust in Human-Agent Teams},
author = {Schelble, Beau G. and Flathmann, Christopher and McNeese, Nathan J. and Freeman, Guo and Mallick, Rohit},
year = {2022},
journal = {Proceedings of the ACM on Human-Computer Interaction},
note = {6(GROUP), 1-29},
doi = {10.1145/3492832}
}Topics
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