首页|FedDAA:a robust federated learning framework to protect privacy and defend against adversarial attack

FedDAA:a robust federated learning framework to protect privacy and defend against adversarial attack

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Federated learning(FL)has emerged to break data-silo and protect clients'privacy in the field of artificial intelligence.However,deep leakage from gradient(DLG)attack can fully reconstruct clients'data from the submitted gradient,which threatens the fundamental privacy of FL.Although cryptology and differential privacy prevent privacy leakage from gradient,they bring negative effect on communication overhead or model performance.Moreover,the original distribution of local gradient has been changed in these schemes,which makes it difficult to defend against adversarial attack.In this paper,we propose a novel federated learning framework with model decomposition,aggregation and assembling(FedDAA),along with a training algorithm,to train federated model,where local gradient is decomposed into multiple blocks and sent to different proxy servers to complete aggregation.To bring better privacy protection performance to FedDAA,an indicator is designed based on image structural similarity to measure privacy leakage under DLG attack and an optimization method is given to protect privacy with the least proxy servers.In addition,we give defense schemes against adversarial attack in FedDAA and design an algorithm to verify the correctness of aggregated results.Experimental results demonstrate that FedDAA can reduce the structural similarity between the reconstructed image and the original image to 0.014 and remain model convergence accuracy as 0.952,thus having the best privacy protection performance and model training effect.More importantly,defense schemes against adversarial attack are compatible with privacy protection in FedDAA and the defense effects are not weaker than those in the traditional FL.Moreover,verification algorithm of aggregation results brings about negligible overhead to FedDAA.

federated learningprivacy protectionadver-sarial attacksaggregated rulecorrectness verification

Shiwei LU、Ruihu LI、Wenbin LIU

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Fundamentals Department,Air Force Engineering University,Xi'an 710051,China

Institute of Advanced Computational Science and Technology,Guangzhou University,Guangzhou 510006,China

国家自然科学基金国家自然科学基金国家自然科学基金国家自然科学基金陕西省自然科学基金陕西省自然科学基金陕西省自然科学基金

Gr6207212811901579118015642022JQ-0462021JQ-3352021JM-216

2024

计算机科学前沿
高等教育出版社

计算机科学前沿

CSTPCDEI
影响因子:0.303
ISSN:2095-2228
年,卷(期):2024.18(2)
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