Decision Theoretic Foundations for Conformal Prediction: Optimal Uncertainty Quantification for Risk-Averse Agents
Shayan Kiyani, George Pappas, Aaron Roth, Hamed Hassani

TL;DR
This paper develops a decision-theoretic framework connecting uncertainty quantification with risk-averse decision-making, introducing an optimal algorithm (RAC) that improves utility while maintaining safety in critical applications.
Contribution
It provides a theoretical foundation and practical algorithm for deriving optimal prediction sets tailored for risk-averse decision makers in sensitive domains.
Findings
RAC achieves higher utility than existing methods.
RAC maintains safety guarantees while improving utility.
Theoretical characterization of optimal prediction sets for risk-averse agents.
Abstract
A fundamental question in data-driven decision making is how to quantify the uncertainty of predictions in ways that can usefully inform downstream action. This interface between prediction uncertainty and decision-making is especially important in risk-sensitive domains, such as medicine. In this paper, we develop decision-theoretic foundations that connect uncertainty quantification using prediction sets with risk-averse decision-making. Specifically, we answer three fundamental questions: (1) What is the correct notion of uncertainty quantification for risk-averse decision makers? We prove that prediction sets are optimal for decision makers who wish to optimize their value at risk. (2) What is the optimal policy that a risk averse decision maker should use to map prediction sets to actions? We show that a simple max-min decision policy is optimal for risk-averse decision makers.…
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Taxonomy
TopicsStatistical and Computational Modeling · Anomaly Detection Techniques and Applications
