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Main Authors: Chen, Leiming, Zhang, Weishan, Dong, Cihao, Qiao, Sibo, Huang, Ziling, Nie, Yuming, Hou, Zhaoxiang, Tan, Chee Wei
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2307.13716
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author Chen, Leiming
Zhang, Weishan
Dong, Cihao
Qiao, Sibo
Huang, Ziling
Nie, Yuming
Hou, Zhaoxiang
Tan, Chee Wei
author_facet Chen, Leiming
Zhang, Weishan
Dong, Cihao
Qiao, Sibo
Huang, Ziling
Nie, Yuming
Hou, Zhaoxiang
Tan, Chee Wei
contents Traditional federated learning uses the number of samples to calculate the weights of each client model and uses this fixed weight value to fusion the global model. However, in practical scenarios, each client's device and data heterogeneity leads to differences in the quality of each client's model. Thus the contribution to the global model is not wholly determined by the sample size. In addition, if clients intentionally upload low-quality or malicious models, using these models for aggregation will lead to a severe decrease in global model accuracy. Traditional federated learning algorithms do not address these issues. To solve this probelm, we propose FedDRL, a model fusion approach using reinforcement learning based on a two staged approach. In the first stage, Our method could filter out malicious models and selects trusted client models to participate in the model fusion. In the second stage, the FedDRL algorithm adaptively adjusts the weights of the trusted client models and aggregates the optimal global model. We also define five model fusion scenarios and compare our method with two baseline algorithms in those scenarios. The experimental results show that our algorithm has higher reliability than other algorithms while maintaining accuracy.
format Preprint
id arxiv_https___arxiv_org_abs_2307_13716
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle FedDRL: A Trustworthy Federated Learning Model Fusion Method Based on Staged Reinforcement Learning
Chen, Leiming
Zhang, Weishan
Dong, Cihao
Qiao, Sibo
Huang, Ziling
Nie, Yuming
Hou, Zhaoxiang
Tan, Chee Wei
Machine Learning
Artificial Intelligence
Traditional federated learning uses the number of samples to calculate the weights of each client model and uses this fixed weight value to fusion the global model. However, in practical scenarios, each client's device and data heterogeneity leads to differences in the quality of each client's model. Thus the contribution to the global model is not wholly determined by the sample size. In addition, if clients intentionally upload low-quality or malicious models, using these models for aggregation will lead to a severe decrease in global model accuracy. Traditional federated learning algorithms do not address these issues. To solve this probelm, we propose FedDRL, a model fusion approach using reinforcement learning based on a two staged approach. In the first stage, Our method could filter out malicious models and selects trusted client models to participate in the model fusion. In the second stage, the FedDRL algorithm adaptively adjusts the weights of the trusted client models and aggregates the optimal global model. We also define five model fusion scenarios and compare our method with two baseline algorithms in those scenarios. The experimental results show that our algorithm has higher reliability than other algorithms while maintaining accuracy.
title FedDRL: A Trustworthy Federated Learning Model Fusion Method Based on Staged Reinforcement Learning
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2307.13716