FedCM: Federated Learning with Client-level Momentum
- URL: http://arxiv.org/abs/2106.10874v1
- Date: Mon, 21 Jun 2021 06:16:19 GMT
- Title: FedCM: Federated Learning with Client-level Momentum
- Authors: Jing Xu, Sen Wang, Liwei Wang, Andrew Chi-Chih Yao
- Abstract summary: Federated Averaging with Client-level Momentum (FedCM) is proposed to tackle problems of partial participation and client heterogeneity in real-world federated learning applications.
FedCM aggregates global gradient information in previous communication rounds and modifies client gradient descent with a momentum-like term, which can effectively correct the bias and improve the stability of local SGD.
- Score: 18.722626360599065
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Federated Learning is a distributed machine learning approach which enables
model training without data sharing. In this paper, we propose a new federated
learning algorithm, Federated Averaging with Client-level Momentum (FedCM), to
tackle problems of partial participation and client heterogeneity in real-world
federated learning applications. FedCM aggregates global gradient information
in previous communication rounds and modifies client gradient descent with a
momentum-like term, which can effectively correct the bias and improve the
stability of local SGD. We provide theoretical analysis to highlight the
benefits of FedCM. We also perform extensive empirical studies and demonstrate
that FedCM achieves superior performance in various tasks and is robust to
different levels of client numbers, participation rate and client
heterogeneity.
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