Mutual Understanding in Human-Machine Teaming.

AAAI Conference on Artificial Intelligence(2022)

Cited 2|Views26
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Abstract
Collaborative robots (i.e., "cobots") and machine learning-based virtual agents are increasingly entering the human workspace with the aim of increasing productivity, enhancing safety, and improving the quality of our lives. These agents will dynamically interact with a wide variety of people in dynamic and novel contexts, increasing the prevalence of human-machine teams in healthcare, manufacturing, and search-and-rescue. In this research, we enhance the mutual understanding within a human-machine team by enabling cobots to understand heterogeneous teammates via person-specific embeddings, identifying contexts in which xAI methods can help improve team mental model alignment, and enabling cobots to effectively communicate information that supports high-performance human-machine teaming.
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Key words
Human-Machine Teaming,Personalized Machine Learning,Explainable AI,Learning From Demonstration,Multi-Agent Systems
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