计算机科学
边缘计算
差别隐私
GSM演进的增强数据速率
互操作性
边缘设备
卷积神经网络
物联网
新闻聚合器
信息隐私
计算机安全
人工智能
数据挖掘
云计算
万维网
操作系统
作者
Mahmuda Akter,Nour Moustafa,Timothy Lynar
标识
DOI:10.1109/infocomwkshps54753.2022.9798196
摘要
Federated Learning (FL) mechanisms determine the implications of sensitive data for constructing on-device Machine Learning (ML) to achieve personalisation in a smart application network, for example, sharing critical information of the smart healthcare industry over the Internet of Things (IoT) systems. The main function of centralised FL can be combined with Edge Intelligence (EI) for processing before final aggregation to reduce data manipulation and privacy hazard. However, executing EI in an Edge Computing (EC) layer also poses privacy risks to clients. Differential Privacy (DP) offers a viable solution by adding artificial noise to a parameter before aggregation. This paper introduces a Federated Edge Aggregator (FEA) framework with DP for safeguarding the high-tech healthcare industry using IoT systems. An iteration-based converged Convolutional Neural Network (CNN) model at Edge Layer (EL) is developed to perform EI to balance $\mathrm{FL}^{\prime}$ s privacy preservation and model performance over an IoT network. The results demonstrated a 90% accuracy performance after specific iterations, better than those of other baseline approaches with accuracy levels of approximately 80% with the same epsilon value of 4. Also, this framework is faster and more successfully meets the privacy preservation paradigm.
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