PsychologyPNAS Nexus
Metacognitive sensitivity: The key to calibrating trust and optimal decision making with AI
D. Lee, J. Pruitt, et al.
Research conducted by Doyeon Lee, Joseph Pruitt, Tianyu Zhou, Jing Du, and Brian Odegaard explores how AI-provided metacognitive sensitivity—such as confidence ratings—can help people calibrate trust and optimally incorporate AI advice. Drawing on seminal perceptual decision-making findings, the authors outline a framework to test how different AI information types guide human–AI joint decisions.
Related Publications
Explore these studies to deepen your understanding
Adjacent work that informs or extends this paper's methodology and findings.
Psychology
Metacognitive sensitivity: The key to calibrating trust and optimal decision making with AI
D. Lee, J. Pruitt, et al.
Medicine and Health
Event-related brain response to visual cues in individuals with Internet gaming disorder: relevance to attentional bias and decision-making
B. Kim, J. Lee, et al.
Economics
The rationality of adaptive decision-making and the feasibility of optimal growth planning
S. Sakaki
Medicine and Health
Quantifying the impact of AI recommendations with explanations on prescription decision making
M. Nagendran, P. Festor, et al.

