Online Resource Allocation With General Constraints
摘要
Online resource allocation (ORA) is a fundamental framework for sequential decision-making problems under budget constraints, with applications ranging from online advertising to revenue management. In this work, we study a broader setting that includes both budget constraints and general constraints, extending the classical budget-only model. This extension is essential for modeling critical economic requirements, such as Return-on-Investment (ROI) constraints. We develop an algorithm that achieves best-of-both-world guarantees within this generalized framework. In particular, against a dynamic benchmark, our algorithm achieves regret in the \emph{stochastic} regime and -regret of order in the \emph{adversarial} regime, where depends on the feasibility margin of the corresponding offline problem. At the same time, our algorithm guarantees strict satisfaction of the budget constraints and cumulative violation for the general ones. From a technical perspective, introducing general constraints alongside budgets precludes the use of standard budget-focus methods. While budget methods rely on a zero-consumption ``safe'' action to ensure feasibility, general constraints are much less ``aligned'' towards feasibility. We overcome these difficulties with a new analysis that exploits \emph{weak adaptivity} to get boundedness of the Lagrangian multipliers and best-of-both-world guarantees.
引用
@article{arxiv.2605.10519,
title = {Online Resource Allocation With General Constraints},
author = {Eleonora Fidelia Chiefari and Francesco Emanuele Stradi and Matteo Castiglioni and Alberto Marchesi},
journal= {arXiv preprint arXiv:2605.10519},
year = {2026}
}