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Privacy preservation in federated learning: An insightful survey from the GDPR perspective

机译:联邦学习中的隐私保存:来自GDPR透视的洞察力调查

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摘要

In recent years, along with the blooming of Machine Learning (ML)-based applications and services, ensuring data privacy and security have become a critical obligation. ML-based service providers not only confront with difficulties in collecting and managing data across heterogeneous sources but also challenges of complying with rigorous data protection regulations such as EU/UK General Data Protection Regulation (GDPR). Furthermore, conventional centralised ML approaches have always come with long-standing privacy risks to personal data leakage, misuse, and abuse. Federated learning (FL) has emerged as a prospective solution that facilitates distributed collaborative learning without disclosing original training data. Unfortunately, retaining data and computation on-device as in FL are not sufficient for privacy-guarantee because model parameters exchanged among participants conceal sensitive information that can be exploited in privacy attacks. Consequently, FL-based systems are not naturally compliant with the GDPR. This article is dedicated to surveying of state-of-the-art privacy-preservation techniques in FL in relations with GDPR requirements. Furthermore, insights into the existing challenges are examined along with the prospective approaches following the GDPR regulatory guidelines that FL-based systems shall implement to fully comply with the GDPR.
机译:近年来,随着机器学习(ML)的盛开,基于应用和服务,确保数据隐私和安全成为一项批判性。基于ML的服务提供商不仅面对收集和管理异构来源的数据,而且遵守欧盟/英国一般数据保护条例(GDPR)等严格数据保护法规的挑战。此外,常规的集中式ML方法始终具有长期隐私风险,以便个人数据泄漏,滥用和滥用。联合学习(FL)已成为一种潜在的解决方案,便于在不公开原始培训数据的情况下促进分布式协作学习。遗憾的是,保留数据和设备的载流量不足以足以进行隐私保证,因为参与者之间交换的模型参数隐藏在隐私攻击中可以利用的敏感信息。因此,基于FL的系统并不自然符合GDPR。本文致力于调查与GDPR要求的关系中的最先进的隐私保存技术。此外,探讨了对现有挑战的见解以及在GDPR基于GD的制度指南遵守基于FL的系统须符合GDPR的情况下的前瞻性方法。

著录项

  • 来源
    《Computers & Security》 |2021年第11期|102402.1-102402.23|共23页
  • 作者单位

    Data Science Institute South Kensington Campus Imperial College London London SW7 2AZ United Kingdom;

    Data Science Institute South Kensington Campus Imperial College London London SW7 2AZ United Kingdom;

    Data Science Institute South Kensington Campus Imperial College London London SW7 2AZ United Kingdom;

    Data Science Institute South Kensington Campus Imperial College London London SW7 2AZ United Kingdom;

    Data Science Institute South Kensington Campus Imperial College London London SW7 2AZ United Kingdom Department of Computer Science Hong Kong Baptist University Koiuloon Tong Hong Kong;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Federated learning; Data protection regulation; GDPR; Personal data; Privacy; Privacy preservation;

    机译:联邦学习;数据保护规范;GDPR;个人资料;隐私;隐私保存;

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