去中心化防御:利用区块链对抗联合学习系统中的中毒攻击

Rashmi Thennakoon, Arosha Wanigasundara, Sanjaya Weerasinghe, Chatura Seneviratne, Yushan Siriwardhana, Madhusanka Liyanage
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引用次数: 0

摘要

通过避免与中央服务器共享本地数据,联合学习(FL)已成为下一代机器学习(ML)。虽然这对客户端的隐私保护有很大好处,但同时也容易受到中毒攻击和中央服务器恶意行为的影响。由于系统的去中心化增强了安全问题,为消除 FL 系统的安全问题,人们对现有 FL 系统的去中心化防御进行了广泛研究。本文提出了一种利用区块链技术对 FL 系统进行去中心化防御的方法,以在不影响现有 FL 系统性能的情况下克服中毒攻击。我们介绍了一种可靠的基于区块链的 FL(BCFL)架构,它有两种不同的模式,即集中式聚合 BCFL(CA-BCFL)和完全去中心化 BCFL(FD-BCFL)。这两种模式都利用安全的链外计算来减少恶意,以替代高成本的链上计算。我们的综合分析表明,所提出的 BCFL 架构能以类似的方式抵御危及聚合器的中毒攻击。作为更好的衡量标准,本文还包括对两种系统模型耗气量的评估。
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Decentralized Defense: Leveraging Blockchain against Poisoning Attacks in Federated Learning Systems
Federated learning (FL) has become the next generation of machine learning (ML) by avoiding local data sharing with a central server. While this becomes a major advantage to client-side privacy, it has a trade-off of becoming vulnerable to poisoning attacks and malicious behavior of the central server. As the decentralization of systems enhances security concerns, integrating decentralized defense for the existing FL systems has been extensively studied to eliminate the security issues of FL systems. This paper proposes a decentralized defense approach to FL systems with blockchain technology to overcome the poisoning attack without affecting the existing FL system's performance. We introduce a reliable blockchain-based FL (BCFL) architecture in two different models, namely, Centralized Aggregated BCFL (CA-BCFL) and Fully Decentralized BCFL (FD-BCFL). Both models utilize secure off-chain computations for malicious mitigation as an alternative to high-cost on-chain computations. Our comprehensive analysis shows that the proposed BCFL architectures can defend in a similar manner against poisoning attacks that compromise the aggregator. As a better measure, the paper has included an evaluation of the gas consumption of our two system models.
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