AI RESEARCH
Concave Statistical Utility Maximization Bandits via Influence-Function Gradients
arXiv CS.LG
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ArXi:2604.22140v1 Announce Type: cross We study stochastic multi-armed bandits in which the objective is a statistical functional of the long-run reward distribution, rather than expected reward alone. Under mild continuity assumptions, we show that the infinite-horizon problem reduces to optimizing over stationary mixed policies: each weight vector \(w\) on the simplex induces a mixture law \(P^w\), and performance is measured by the concave utility \(U(w)=\mathfrak U(P^w