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Working Paper
A Bayesian Framework for Human-AI Collaboration: Complementarity and Correlation Neglect
Author(s)
We develop a decision-theoretic model of human–AI interaction to study when
AI assistance improves or impairs human decision-making. A human decision-maker
observes private information and receives a recommendation from an AI system, but
may combine these signals imperfectly. We show that the effect of AI assistance
decomposes into two main forces: the marginal informational value of the AI beyond
what the human already knows, and a behavioral distortion arising from how the
human uses the AI’s recommendation. Central to our analysis is a micro-founded
measure of informational overlap between human and AI knowledge. We study an
empirically relevant form of imperfect decision-making—correlation neglect—whereby
humans treat AI recommendations as independent of their own information despite
shared evidence. Under this model, we characterize how overlap and AI capabilities shape
the Human-AI interaction regime between augmentation, impairment, complementarity,
and automation, and draw key insights.
Date Published:
2026
Citations:
Amin, Saurabh, Amine Bennouna, Liang Lyu, Asuman Ozdaglar. 2026. A Bayesian Framework for Human-AI Collaboration: Complementarity and Correlation Neglect.