CRSFL:基于集群的资源感知拆分联合学习,实现持续验证

IF 7.7 2区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
Mohamad Wazzeh , Mohamad Arafeh , Hani Sami , Hakima Ould-Slimane , Chamseddine Talhi , Azzam Mourad , Hadi Otrok
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引用次数: 0

摘要

在瞬息万变的技术世界中,持续的身份验证和全面的访问管理对于用户与设备的交互至关重要。最近出现的拆分学习(SL)和联合学习(FL)是训练分散式机器学习(ML)模型的有前途的技术。随着智能手机和物联网(IoT)设备的使用越来越多,这些分布式技术使资源有限的用户能够在服务器的协助下完成神经网络模型训练,并在不同节点之间协同组合知识。在本研究中,我们建议将这些技术结合起来,在保护用户隐私和限制设备资源使用的同时,解决持续验证难题。然而,由于 SL 的顺序训练和不同规格的物联网设备之间的资源差异,模型的训练速度较慢。因此,我们采用基于集群的方法,将功能相似的设备分组,以减轻速度慢的设备的影响,同时过滤掉无法训练模型的设备。此外,我们还使用 SL 和 FL 技术同时训练客户端,同时分析该过程的开销负担,从而解决训练 ML 模型的效率和鲁棒性问题。在聚类之后,我们通过遗传算法(GA)根据精心设计的目标列表进行优化,选择一组最佳客户端参与训练。我们将所提框架的性能与基线方法进行了比较,并使用真实的 UMDAA-02-FD 人脸检测数据集展示了其优势。结果表明,我们提出的 CRSFL 方法在连续身份验证场景中保持了较高的准确性,并减少了开销负担,同时保护了用户隐私。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CRSFL: Cluster-based Resource-aware Split Federated Learning for Continuous Authentication

In the ever-changing world of technology, continuous authentication and comprehensive access management are essential during user interactions with a device. Split Learning (SL) and Federated Learning (FL) have recently emerged as promising technologies for training a decentralized Machine Learning (ML) model. With the increasing use of smartphones and Internet of Things (IoT) devices, these distributed technologies enable users with limited resources to complete neural network model training with server assistance and collaboratively combine knowledge between different nodes. In this study, we propose combining these technologies to address the continuous authentication challenge while protecting user privacy and limiting device resource usage. However, the model’s training is slowed due to SL sequential training and resource differences between IoT devices with different specifications. Therefore, we use a cluster-based approach to group devices with similar capabilities to mitigate the impact of slow devices while filtering out the devices incapable of training the model. In addition, we address the efficiency and robustness of training ML models by using SL and FL techniques to train the clients simultaneously while analyzing the overhead burden of the process. Following clustering, we select the best set of clients to participate in training through a Genetic Algorithm (GA) optimized on a carefully designed list of objectives. The performance of our proposed framework is compared to baseline methods, and the advantages are demonstrated using a real-life UMDAA-02-FD face detection dataset. The results show that CRSFL, our proposed approach, maintains high accuracy and reduces the overhead burden in continuous authentication scenarios while preserving user privacy.

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来源期刊
Journal of Network and Computer Applications
Journal of Network and Computer Applications 工程技术-计算机:跨学科应用
CiteScore
21.50
自引率
3.40%
发文量
142
审稿时长
37 days
期刊介绍: The Journal of Network and Computer Applications welcomes research contributions, surveys, and notes in all areas relating to computer networks and applications thereof. Sample topics include new design techniques, interesting or novel applications, components or standards; computer networks with tools such as WWW; emerging standards for internet protocols; Wireless networks; Mobile Computing; emerging computing models such as cloud computing, grid computing; applications of networked systems for remote collaboration and telemedicine, etc. The journal is abstracted and indexed in Scopus, Engineering Index, Web of Science, Science Citation Index Expanded and INSPEC.
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