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Human-AI teaming refers to systems in which humans and artificial intelligence (AI) agents collaborate to provide significant mission performance improvements over that which humans or AI can achieve alone. The goal is faster and more accurate decision-making by integrating the rapid data ingest, learning, and analyses capabilities of AI with the creative problem solving and abstraction capabilities of humans. The purpose of this panel is to discuss research directions in Trust Engineering for building appropriate bi-directional trust between humans and AI. Discussions focus on the challenges in systems that are increasingly complex and work within imperfect information environments. Panelists provide their perspectives on addressing these challenges through concepts such as dynamic relationship management, adaptive systems, co-discovery learning, and algorithmic transparency. Mission scenarios in command and control (C2), piloting, cybersecurity, and criminal intelligence analysis demonstrate the importance of bi-directional trust in human-AI teams.
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Neta Ezer
Northrop Grumman (United States)
Sylvain Bruni
Aptima (United States)
Yang Cai
Guizhou Center for Disease Control and Prevention
Proceedings of the Human Factors and Ergonomics Society Annual Meeting
Carnegie Mellon University
Northrop Grumman (United States)
Defence Science and Technology Laboratory
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Ezer et al. (Fri,) studied this question.
synapsesocial.com/papers/6a0ebb63a14f152feaf9c418 — DOI: https://doi.org/10.1177/1071181319631264