With the increasing use and adoption of artificial intelligence (AI), the reliability of modern data systems will be driven by a tighter teaming between human experts and intelligent machine teammates. As in the case of human-human teams, the success of human-machine teams will also rely on clear communication about mutual goals and actions. In this paper, we combine related literature from cognitive psychology, human-machine teaming, uncertainty in data analysis, and multi-agent systems to propose a new form of uncertainty: interaction uncertainty for characterizing bidirectional communication in human-machine teams. We map the causes and effects of interaction uncertainty and outline potential ways to mitigate uncertainty for mutual trust in a high-consequence real-world scenario.
Published: August 7, 2024
Citation
Wenskovitch J.E., C.K. Fallon, K. Miller, and A. Dasgupta. 2024.Characterizing Interaction Uncertainty in Human-Machine Teams. In IEEE 4th International Conference on Human-Machine Systems (ICHMS 2024), May 15-17, 2024 Toronto, ON, Canada, 1-6. Piscataway, New Jersey:IEEE.PNNL-SA-192637.doi:10.1109/ICHMS59971.2024.10555605