Distributed Bandit Online Convex Optimization with Time-Varying Coupled Inequality Constraints
Xinlei Yi, Xiuxian Li, Tao Yang, Lihua Xie, Karl H. Johansson, and, Tianyou Chai

TL;DR
This paper develops distributed algorithms for bandit online convex optimization with time-varying coupled constraints, achieving sublinear regret and constraint violation in both one- and two-point feedback scenarios.
Contribution
It introduces novel distributed bandit algorithms for constrained online convex optimization with theoretical guarantees under time-varying coupled constraints.
Findings
Achieves sublinear expected regret in both feedback settings.
Achieves sublinear constraint violation in both feedback settings.
Provides numerical simulations demonstrating theoretical results.
Abstract
This paper considers the problem of distributed bandit online convex optimization with time-varying coupled inequality constraints. This problem can be defined as a repeated game between a group of learners and an adversary. The learners attempt to minimize a sequence of global loss functions and at the same time satisfy a sequence of coupled constraint functions. The global loss and the coupled constraint functions are the sum of local convex loss and constraint functions, respectively, which are adaptively generated by the adversary. The local loss and constraint functions are revealed in a bandit manner, i.e., only the values of loss and constraint functions at sampled points are revealed to the learners, and the revealed function values are held privately by each learner. We consider two scenarios, one- and two-point bandit feedback, and propose two corresponding distributed bandit…
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Taxonomy
TopicsAdvanced Bandit Algorithms Research · Optimization and Search Problems · Smart Grid Energy Management
