Asynchronous Upper Confidence Bound Algorithms for Federated Linear Bandits
Abstract
Linear contextual bandit is a popular online learning problem. It has been mostly studied in centralized learning settings. With the surging demand of large-scale decentralized model learning, e.g., federated learning, how to retain regret minimization while reducing communication cost becomes an open challenge. In this paper, we study linear contextual bandit in a federated learning setting. We propose a general framework with asynchronous model update and communication for a collection of homogeneous clients and heterogeneous clients, respectively. Rigorous theoretical analysis is provided about the regret and communication cost under this distributed learning framework; and extensive empirical evaluations demonstrate the effectiveness of our solution.
Cite
@article{arxiv.2110.01463,
title = {Asynchronous Upper Confidence Bound Algorithms for Federated Linear Bandits},
author = {Chuanhao Li and Hongning Wang},
journal= {arXiv preprint arXiv:2110.01463},
year = {2021}
}
Comments
27 pages, 4 figures