Helen: Maliciously Secure Coopetitive Learning for Linear Models

Wenting Zheng, R. A. Popa, Joseph Gonzalez, I. Stoica
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引用次数: 112

Abstract

Many organizations wish to collaboratively train machine learning models on their combined datasets for a common benefit (e.g., better medical research, or fraud detection). However, they often cannot share their plaintext datasets due to privacy concerns and/or business competition. In this paper, we design and build Helen, a system that allows multiple parties to train a linear model without revealing their data, a setting we call coopetitive learning. Compared to prior secure training systems, Helen protects against a much stronger adversary who is malicious and can compromise m−1 out of m parties. Our evaluation shows that Helen can achieve up to five orders of magnitude of performance improvement when compared to training using an existing state-of-the-art secure multi-party computation framework.
线性模型的恶意安全合作学习
许多组织希望在其组合数据集上协作训练机器学习模型,以实现共同利益(例如,更好的医学研究或欺诈检测)。然而,由于隐私问题和/或商业竞争,它们通常不能共享明文数据集。在本文中,我们设计并构建了Helen,这是一个允许多方在不泄露数据的情况下训练线性模型的系统,我们称之为合作学习。与之前的安全培训系统相比,Helen可以抵御更强大的恶意对手,并且可以在m方中危及m - 1方。我们的评估表明,与使用现有最先进的安全多方计算框架进行训练相比,Helen可以实现高达五个数量级的性能改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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