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A Lyapunov-Based Methodology for Constrained Optimization with Bandit Feedback

9 June 2021
Semih Cayci
Yilin Zheng
A. Eryilmaz
ArXiv (abs)PDFHTML
Abstract

In a wide variety of applications including online advertising, contractual hiring, and wireless scheduling, the controller is constrained by a stringent budget constraint on the available resources, which are consumed in a random amount by each action, and a stochastic feasibility constraint that may impose important operational limitations on decision-making. In this work, we consider a general model to address such problems, where each action returns a random reward, cost, and penalty from an unknown joint distribution, and the decision-maker aims to maximize the total reward under a budget constraint BBB on the total cost and a stochastic constraint on the time-average penalty. We propose a novel low-complexity algorithm based on Lyapunov optimization methodology, named LyOn{\tt LyOn}LyOn, and prove that it achieves O(Blog⁡B)O(\sqrt{B\log B})O(BlogB​) regret and O(log⁡B/B)O(\log B/B)O(logB/B) constraint-violation. The low computational cost and sharp performance bounds of LyOn{\tt LyOn}LyOn suggest that Lyapunov-based algorithm design methodology can be effective in solving constrained bandit optimization problems.

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