Training Humans for Robust Human-Agent Teaming: Knowing When to Engage with an AI Partner

Leon Lange, Qiao Zhang, Christopher J. MacLellan, Ying Wu

Proceedings of the 2025 AAAI Symposium Series

2025

Abstract

Learning to team with an AI counterpart can be challenging – particularly in the context of an unfamiliar task that must also be learned. This study compares the impacts of scaffolded versus self-paced training on human-AI agent teams negotiating a novel logistics and sustainment task. It was found that guiding participants early on in how to leverage AI assistance (scaffolded practice) led to much more robust teaming than allowing them to learn at their own pace. Additionally, teams whose human counterpart received scaffolded practice tended to achieve higher scores than those who learned under self-direction. Post-hoc analysis also revealed that extit{when} human teammembers leveraged the agent was of particular importance -- with the greatest impact of human-AI teaming observed in the most high stakes periods of the game. Taken together, these findings demonstrate not only that some forms of training are more beneficial than others for human-AI agent teaming -- but also, that context-specific learning on the fly is important for effective team performance.

Topics:Human-AI Teaming

BibTeX

@inproceedings{lange-aaai-sss-2025,
  title     = {Training Humans for Robust Human-Agent Teaming: Knowing When to Engage with an AI Partner},
  author    = {Lange, Leon and Zhang, Qiao and MacLellan, Christopher J. and Wu, Ying},
  booktitle = {Proceedings of the 2025 AAAI Symposium Series},
  volume    = {5},
  number    = {1},
  pages     = {83-86},
  year      = {2025},
  doi       = {10.1609/aaaiss.v5i1.35563},
}

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