UnSplit:针对分裂学习的数据无关模型反转、模型窃取和标签推理攻击

Ege Erdogan, Alptekin Kupcu, A. E. Cicek
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引用次数: 37

摘要

训练深度神经网络通常会迫使用户在分布式或外包的环境中工作,同时还会带来隐私问题。拆分学习的目的是通过在客户机和服务器之间分布模型来解决这个问题。由于服务器无法看到客户端的模型和输入,该方案被认为提供了隐私。我们通过两个新的攻击来证明这是不正确的。(1)我们证明了一个诚实但好奇的分裂学习服务器,只配备了客户端神经网络架构的知识,可以恢复输入样本并获得与客户端模型功能相似的模型,而不会被检测到。(2)我们证明了如果客户端只隐藏模型的输出层来“保护”私有标签,诚实但好奇的服务器可以以完美的准确率推断出标签。我们使用各种基准数据集测试我们的攻击,并针对提出的隐私增强扩展来分割学习。我们的研究结果表明,明文分割学习可能会带来严重的风险,从数据(输入)隐私到知识产权(模型参数),并且只会提供一种虚假的安全感。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
UnSplit: Data-Oblivious Model Inversion, Model Stealing, and Label Inference Attacks against Split Learning
Training deep neural networks often forces users to work in a distributed or outsourced setting, accompanied with privacy concerns. Split learning aims to address this concern by distributing the model among a client and a server. The scheme supposedly provides privacy, since the server cannot see the clients' models and inputs. We show that this is not true via two novel attacks. (1) We show that an honest-but-curious split learning server, equipped only with the knowledge of the client neural network architecture, can recover the input samples and obtain a functionally similar model to the client model, without being detected. (2) We show that if the client keeps hidden only the output layer of the model to ''protect'' the private labels, the honest-but-curious server can infer the labels with perfect accuracy. We test our attacks using various benchmark datasets and against proposed privacy-enhancing extensions to split learning. Our results show that plaintext split learning can pose serious risks, ranging from data (input) privacy to intellectual property (model parameters), and provide no more than a false sense of security.
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