计算机科学
联合学习
稳健性(进化)
聚类分析
分布式学习
推论
骨料(复合)
分布式计算
机器学习
数据挖掘
计算机安全
人工智能
基因
生物化学
复合材料
化学
材料科学
教育学
心理学
作者
Yihao Cao,Jianbiao Zhang,Yaru Zhao,Pengchong Su,Haoxiang Huang
标识
DOI:10.1016/j.eswa.2023.122410
摘要
Federated learning has gained popularity as it enables collaborative training without sharing local data. Despite its advantages, federated learning requires sharing the model parameters during model aggregation which poses security risks. In addition, existing secure federated learning frameworks cannot meet all the requirements of resource-constrained IoT devices and non-independent and identically distributed (non-IID) setting. This paper proposes a novel secure and robust federated learning framework (SRFL) with trusted execution environments (TEEs). The framework provides security and robustness for federated learning on IoT devices under non-IID data by leveraging TEEs to safeguard sensitive model components from being leaked. Simultaneously, we introduce a shared representation training approach to enhance the accuracy and security under non-IID setting. Furthermore, a multi-model robust aggregation method using membership degree is proposed to enhance robustness. This method uses membership degree generated by soft clustering to categorize clients for better aggregation performance. Additionally, we evaluate SRFL in a simulation environment, confirming that it improves accuracy by 5%–30% over FedAVG in non-IID setting and protects the model from membership inference attack and Byzantine attack. It also reduces backdoor attack success rate by 4%–10% more compared to other robust aggregation algorithms.
科研通智能强力驱动
Strongly Powered by AbleSci AI