A Lightweight and Secure Deep Learning Model for Privacy-Preserving Federated Learning in Intelligent Enterprises

被引:1
作者
Fotohi, Reza [1 ]
Shams Aliee, Fereidoon [1 ]
Farahani, Bahar [2 ]
机构
[1] Shahid Beheshti Univ, Fac Comp Sci & Engn, Tehran 1983969411, Iran
[2] Shahid Beheshti Univ, Cyberspace Res Inst, Tehran 1983969411, Iran
来源
IEEE INTERNET OF THINGS JOURNAL | 2024年 / 11卷 / 19期
关键词
Data models; Vectors; Blockchains; Servers; Internet of Things; Computational modeling; Accuracy; Blockchain; communication efficiency; federated learning (FL); nonindependent and identically distributed (IID); privacy-preserving;
D O I
10.1109/JIOT.2024.3421602
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The ever-growing Internet of Things (IoT) connections drive a new type of organization, the intelligent enterprise. In intelligent enterprises, machine learning-based models are adopted to extract insights from data. Due to these traditional models' efficiency and privacy challenges, a new federated learning (FL) paradigm has emerged. In FL, multiple enterprises can jointly train a model to update a final model. However, first, FL-trained models usually perform worse than centralized models, especially when enterprises' training data are nonindependent and identically distributed (IID). Second, due to the centrality of FL and the untrustworthiness of local enterprises, traditional FL solutions are vulnerable to poisoning and inference attacks and violate privacy. Third, the continuous transfer of parameters between enterprises and servers increases communication costs. Therefore, to this end, the FedAnil+ model is proposed, a novel, lightweight, and secure Federated Deep Learning Model that includes three main phases. In the first phase, the goal is to solve the data type distribution skew challenge. Addressing privacy concerns against poisoning and inference attacks is given in the second phase. Finally, to alleviate the communication overhead, a novel compression approach is proposed that significantly reduces the size of the updates. The experiment results validate that FedAnil+ is secure against inference and poisoning attacks with better accuracy. In addition, in terms of model accuracy (13%, 16%, and 26%), communication cost (17%, 21%, and 25%), and computation cost (7%, 9%, and 11%) improvements over existing approaches. The FedAnil+ code is available on GitHub.
引用
收藏
页码:31988 / 31998
页数:11
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