具有混合差分隐私的联盟学习,实现安全可靠的跨物联网平台知识共享

Oshamah Ibrahim Khalaf, Ashokkumar S.R, Sameer Algburi, Anupallavi S, Dhanasekaran Selvaraj, M. S. Sharif, Wael Elmedany
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引用次数: 0

摘要

联盟学习作为一种协作式机器学习方法,允许多个用户在不直接交换原始数据的情况下共同训练一个共享模型,因而受到了广泛关注。本研究通过引入一种融合差分隐私和联合学习(HDP-FL)的创新混合方法,解决了分布式学习中平衡数据隐私和实用性的基本挑战。通过在 EMNIST 和 CIFAR-10 数据集上进行细致的实验,这种混合方法取得了实质性的进步,与传统的联合学习方法相比,EMNIST 和 CIFAR-10 的模型准确率分别提高了 4.22% 和高达 9.39%。我们对参数的调整突出了噪声对隐私的影响,展示了我们的混合 DP 方法在隐私和准确性之间取得平衡的有效性。对各种 FL 技术和客户端数量的评估强调了这种权衡,特别是在非 IID 数据环境中,我们的混合方法有效地抵消了准确性的下降。与标准机器学习和最先进的 FL 方法进行的比较分析一致显示了我们提出的模型的优越性,EMNIST 和 CIFAR-10 的准确率分别达到了 96.29% 和 82.88%。这些见解为物联网设备之间安全协作和知识共享提供了一种战略方法,同时又不损害数据隐私,确保了分散网络中高效可靠的学习机制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Federated learning with hybrid differential privacy for secure and reliable cross‐IoT platform knowledge sharing
The federated learning has gained prominent attention as a collaborative machine learning method, allowing multiple users to jointly train a shared model without directly exchanging raw data. This research addresses the fundamental challenge of balancing data privacy and utility in distributed learning by introducing an innovative hybrid methodology fusing differential privacy with federated learning (HDP‐FL). Through meticulous experimentation on EMNIST and CIFAR‐10 data sets, this hybrid approach yields substantial advancements, showcasing a noteworthy 4.22% and up to 9.39% enhancement in model accuracy for EMNIST and CIFAR‐10, respectively, compared to conventional federated learning methods. Our adjustments to parameters highlighted how noise impacts privacy, showcasing the effectiveness of our hybrid DP approach in striking a balance between privacy and accuracy. Assessments across diverse FL techniques and client counts emphasized this trade‐off, particularly in non‐IID data settings, where our hybrid method effectively countered accuracy declines. Comparative analyses against standard machine learning and state‐of‐the‐art FL approaches consistently showcased the superiority of our proposed model, achieving impressive accuracies of 96.29% for EMNIST and 82.88% for CIFAR‐10. These insights offer a strategic approach to securely collaborate and share knowledge among IoT devices without compromising data privacy, ensuring efficient and reliable learning mechanisms across decentralized networks.
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