AI RESEARCH

Instantiating Bayesian CVaR lower bounds in Interactive Decision Making Problems

arXiv CS.LG

ArXi:2604.12519v1 Announce Type: new Recent work established a generalized-Fano framework for lower bounding prior-predictive (Bayesian) CVaR in interactive statistical decision making. In this paper, we show how to instantiate that framework in concrete interactive problems and derive explicit Bayesian CVaR lower bounds from its abstract corollaries. Our approach compares a hard model with a reference model using squared Hellinger distance, and combines a lower bound on a reference hinge term with a bound on the distinguishability of the two models.