The Value of AI Advice: Personalized and Value-Maximizing AI Advisors Are Necessary to Reliably Benefit Experts and Organizations
Journal:
arXiv
Published Date:
Dec 27, 2024
Abstract
Despite advances in AI's performance and interpretability, AI advisors can
undermine experts' decisions and increase the time and effort experts must
invest to make decisions. Consequently, AI systems deployed in high-stakes
settings often fail to consistently add value across contexts and can even
diminish the value that experts alone provide. Beyond harm in specific domains,
such outcomes impede progress in research and practice, underscoring the need
to understand when and why different AI advisors add or diminish value. To
bridge this gap, we stress the importance of assessing the value AI advice
brings to real-world contexts when designing and evaluating AI advisors.
Building on this perspective, we characterize key pillars -- pathways through
which AI advice impacts value -- and develop a framework that incorporates
these pillars to create reliable, personalized, and value-adding advisors. Our
results highlight the need for system-level, value-driven development of AI
advisors that advise selectively, are tailored to experts' unique behaviors,
and are optimized for context-specific trade-offs between decision improvements
and advising costs. They also reveal how the lack of inclusion of these pillars
in the design of AI advising systems may be contributing to the failures
observed in practical applications.