BloomDT - An improved privacy-preserving decision tree inference scheme

Sean Lalla, Rongxing Lu, Yunguo Guan, Songnian Zhang
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引用次数: 0

Abstract

Outsourcing decision tree models to cloud servers can allow model providers to distribute their models at scale without purchasing dedicated hardware for model hosting. However, model providers may be forced to disclose private model details when hosting their models in the cloud. Due to the time and monetary investments associated with model training, model providers may be reluctant to host their models in the cloud due to these privacy concerns. Furthermore, clients may be reluctant to use these outsourced models because their private queries or their results may be disclosed to the cloud servers. In this paper, we propose BloomDT, a privacy-preserving scheme for decision tree inference, which uses Bloom filters to hide the original decision tree's structure, the threshold values of each node, and the order in which features are tested while maintaining reliable classification results that are secure even if the cloud servers collude. Our scheme's security and performance are verified through rigorous testing and analysis.

BloomDT - 一种改进的隐私保护决策树推理方案
将决策树模型外包给云服务器可以让模型提供商大规模分发模型,而无需购买专用硬件来托管模型。不过,模型提供商在云端托管模型时可能会被迫披露私人模型细节。由于与模型训练相关的时间和金钱投资,模型提供商可能会因为这些隐私问题而不愿将其模型托管到云中。此外,客户可能也不愿意使用这些外包模型,因为他们的私人查询或结果可能会泄露给云服务器。在本文中,我们提出了一种用于决策树推理的隐私保护方案--BloomDT,它使用 Bloom 过滤器来隐藏原始决策树的结构、每个节点的阈值以及测试特征的顺序,同时保持可靠的分类结果,即使云服务器串通一气也不会泄露。通过严格的测试和分析,我们验证了该方案的安全性和性能。
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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