PRICURE: Privacy-Preserving Collaborative Inference in a Multi-Party Setting

Ismat Jarin, Birhanu Eshete
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引用次数: 11

Abstract

When multiple parties that deal with private data aim for a collaborative prediction task such as medical image classification, they are often constrained by data protection regulations and lack of trust among collaborating parties. If done in a privacy-preserving manner, predictive analytics can benefit from the collective prediction capability of multiple parties holding complementary datasets on the same machine learning task. This paper presents PRICURE, a system that combines complementary strengths of secure multi-party computation (SMPC) and differential privacy (DP) to enable privacy-preserving collaborative prediction among multiple model owners. SMPC enables secret-sharing of private models and client inputs with non-colluding secure servers to compute predictions without leaking model parameters and inputs. DP masks true prediction results via noisy aggregation so as to deter a semi-honest client who may mount membership inference attacks. We evaluate PRICURE on neural networks across four datasets including benchmark medical image classification datasets. Our results suggest PRICURE guarantees privacy for tens of model owners and clients with acceptable accuracy loss. We also show that DP reduces membership inference attack exposure without hurting accuracy.
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PRICURE:多方环境下保护隐私的协同推理
当处理私人数据的多方以协同预测任务(如医学图像分类)为目标时,他们往往受到数据保护法规和协作各方之间缺乏信任的限制。如果以保护隐私的方式进行,预测分析可以受益于在同一机器学习任务上持有互补数据集的多方的集体预测能力。本文提出了一种将安全多方计算(SMPC)和差分隐私(DP)的互补优势相结合的PRICURE系统,以实现多个模型所有者之间保持隐私的协作预测。SMPC支持私有模型和客户端输入与非串通安全服务器的秘密共享,从而在不泄漏模型参数和输入的情况下计算预测。DP通过噪声聚合掩盖真实的预测结果,从而阻止可能发动成员推理攻击的半诚实客户端。我们在包括基准医学图像分类数据集在内的四个数据集上对神经网络的PRICURE进行了评估。我们的结果表明,PRICURE在可接受的精度损失下保证了数十个模型所有者和客户的隐私。我们还表明,DP在不损害准确性的情况下减少了隶属度推理攻击的暴露。
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