一种基于量化的隐私保护分布式学习技术

IF 6.2 2区 计算机科学 Q1 COMPUTER SCIENCE, THEORY & METHODS Future Generation Computer Systems-The International Journal of Escience Pub Date : 2025-06-01 Epub Date: 2025-02-04 DOI:10.1016/j.future.2025.107741
Maurizio Colombo , Rasool Asal , Ernesto Damiani , Lamees M. AlQassem , Al Anoud Almemari , Yousof Alhammadi
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引用次数: 0

摘要

机器学习(ML)模型的分布式训练在确保数据和参数保护方面提出了重大挑战。隐私增强技术(pet)为解决这些问题提供了一个有希望的初步步骤,但在分布式学习中实现机密性和差异隐私仍然很复杂。本文介绍了一种为ML模型的分布式训练量身定制的新型数据保护技术,以确保符合监管标准。我们的方法利用一种量化的多哈希数据表示,称为哈希梳,结合随机化来实现训练数据和模型参数的r差分隐私(RDP)。训练协议被设计为只需要几个超参数的共同知识,这些超参数使用多方计算协议安全地共享。实验结果证明了该方法在保护隐私和模型准确性方面的有效性。
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A quantization-based technique for privacy preserving distributed learning
The distributed training of machine learning (ML) models presents significant challenges in ensuring data and parameter protection. Privacy-enhancing technologies (PETs) offer a promising initial step towards addressing these concerns, yet achieving confidentiality and differential privacy in distributed learning remains complex. This paper introduces a novel data protection technique tailored for the distributed training of ML models, ensuring compliance with regulatory standards. Our approach utilizes a quantized multi-hash data representation, known as Hash-Comb, combined with randomization to achieve Rényi differential privacy (RDP) for both training data and model parameters. The training protocol is designed to require only the common knowledge of a few hyper-parameters, which are securely shared using multi-party computation protocols. Experimental results demonstrate the effectiveness of our method in preserving both privacy and model accuracy.
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来源期刊
CiteScore
19.90
自引率
2.70%
发文量
376
审稿时长
10.6 months
期刊介绍: Computing infrastructures and systems are constantly evolving, resulting in increasingly complex and collaborative scientific applications. To cope with these advancements, there is a growing need for collaborative tools that can effectively map, control, and execute these applications. Furthermore, with the explosion of Big Data, there is a requirement for innovative methods and infrastructures to collect, analyze, and derive meaningful insights from the vast amount of data generated. This necessitates the integration of computational and storage capabilities, databases, sensors, and human collaboration. Future Generation Computer Systems aims to pioneer advancements in distributed systems, collaborative environments, high-performance computing, and Big Data analytics. It strives to stay at the forefront of developments in grids, clouds, and the Internet of Things (IoT) to effectively address the challenges posed by these wide-area, fully distributed sensing and computing systems.
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