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Enabling Rapid Shared Human-AI Mental Model Alignment via the After-Action Review

25 March 2025
Edward Gu
H. Siu
Melanie Platt
Isabelle Hurley
Jaime D. Peña
Rohan R. Paleja
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Abstract

In this work, we present two novel contributions toward improving research in human-machine teaming (HMT): 1) a Minecraft testbed to accelerate testing and deployment of collaborative AI agents and 2) a tool to allow users to revisit and analyze behaviors within an HMT episode to facilitate shared mental model development. Our browser-based Minecraft testbed allows for rapid testing of collaborative agents in a continuous-space, real-time, partially-observable environment with real humans without cumbersome setup typical to human-AI interaction user studies. As Minecraft has an extensive player base and a rich ecosystem of pre-built AI agents, we hope this contribution can help to facilitate research quickly in the design of new collaborative agents and in understanding different human factors within HMT. Our mental model alignment tool facilitates user-led post-mission analysis by including video displays of first-person perspectives of the team members (i.e., the human and AI) that can be replayed, and a chat interface that leverages GPT-4 to provide answers to various queries regarding the AI's experiences and model details.

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@article{gu2025_2503.19607,
  title={ Enabling Rapid Shared Human-AI Mental Model Alignment via the After-Action Review },
  author={ Edward Gu and Ho Chit Siu and Melanie Platt and Isabelle Hurley and Jaime Peña and Rohan Paleja },
  journal={arXiv preprint arXiv:2503.19607},
  year={ 2025 }
}
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