Federated PAC-Bayesian Learning on Non-IID data
Zhao, Zihao, Liu, Yang, Ding, Wenbo, Zhang, Xiao-Ping
–arXiv.org Artificial Intelligence
Existing research has either adapted the Probably Approximately Correct (PAC) Bayesian framework for federated learning (FL) or used information-theoretic PAC-Bayesian bounds while introducing their theorems, but few considering the non-IID challenges in FL. Our work presents the first non-vacuous federated PAC-Bayesian bound tailored for non-IID local data. This bound assumes unique prior knowledge for each client and variable aggregation weights. We also introduce an objective function and an innovative Gibbs-based algorithm for the optimization of the derived bound. The results are validated on real-world datasets.
arXiv.org Artificial Intelligence
Sep-12-2023