Federated Learning on Adaptively Weighted Nodes by Bilevel Optimization
Abstract
We propose a federated learning method with weighted nodes in which the weights can be modified to optimize the model's performance on a separate validation set. The problem is formulated as a bilevel optimization where the inner problem is a federated learning problem with weighted nodes and the outer problem focuses on optimizing the weights based on the validation performance of the model returned from the inner problem. A communication-efficient federated optimization algorithm is designed to solve this bilevel optimization problem. Under an error-bound assumption, we analyze the generalization performance of the output model and identify scenarios when our method is in theory superior to training a model only locally and to federated learning with static and evenly distributed weights.
Cite
@article{arxiv.2207.10751,
title = {Federated Learning on Adaptively Weighted Nodes by Bilevel Optimization},
author = {Yankun Huang and Qihang Lin and Nick Street and Stephen Baek},
journal= {arXiv preprint arXiv:2207.10751},
year = {2022}
}