Learning to communicate proactively in human-agent teaming

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Abstract

Artificially intelligent agents increasingly collaborate with humans in human-agent teams. Timely proactive sharing of relevant information within the team contributes to the overall team performance. This paper presents a machine learning approach to proactive communication in AI-agents using contextual factors. Proactive communication was learned in two consecutive experimental steps: (a) multi-agent team simulations to learn effective communicative behaviors, and (b) human-agent team experiments to refine communication suitable for a human team member. Results consist of proactive communication policies for communicating both beliefs and goals within human-agent teams. Agents learned to use minimal communication to improve team performance in simulation, while they learned more specific socially desirable behaviors in the human-agent team experiment.

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van Zoelen, E. M., Cremers, A., Dignum, F. P. M., van Diggelen, J., & Peeters, M. M. (2020). Learning to communicate proactively in human-agent teaming. In Communications in Computer and Information Science (Vol. 1233 CCIS, pp. 238–249). Springer. https://doi.org/10.1007/978-3-030-51999-5_20

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