XGBoost的安全协同训练和推理

Andrew Law, Chester Leung, Rishabh Poddar, R. A. Popa, Chenyu Shi, Octavian Sima, Chaofan Yu, Xingmeng Zhang, Wenting Zheng
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引用次数: 21

摘要

近年来,梯度增强决策树学习已被证明是一种训练鲁棒模型的有效方法。此外,多方之间的协作学习具有极大地使所有相关方受益的潜力,但由于业务、监管和责任方面的考虑,组织在共享敏感数据方面也遇到了障碍。我们提出了Secure XGBoost,这是一个隐私保护系统,可以实现XGBoost模型的多方训练和推理。安全的XGBoost在硬件enclave的帮助下保护每一方数据的隐私以及计算的完整性。至关重要的是,Secure XGBoost使用新颖的数据无关算法增强了enclave的安全性,该算法可以防止访问模式泄漏引起的对enclave的访问侧信道攻击。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Secure Collaborative Training and Inference for XGBoost
In recent years, gradient boosted decision tree learning has proven to be an effective method of training robust models. Moreover, collaborative learning among multiple parties has the potential to greatly benefit all parties involved, but organizations have also encountered obstacles in sharing sensitive data due to business, regulatory, and liability concerns. We propose Secure XGBoost, a privacy-preserving system that enables multiparty training and inference of XGBoost models. Secure XGBoost protects the privacy of each party's data as well as the integrity of the computation with the help of hardware enclaves. Crucially, Secure XGBoost augments the security of the enclaves using novel data-oblivious algorithms that prevent access side-channel attacks on enclaves induced via access pattern leakage.
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