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引用次数: 1

摘要

协作式机器学习允许多个参与者获得对其联合数据的全局和有价值的见解。尽管如此,在数据敏感的应用程序中,保持数据从模型训练阶段到推理阶段的端到端路径的机密性是至关重要的,这可以防止关于训练数据、学习模型或推理查询的任何形式的信息泄露。在本文中,我们提出了通过PrivML解决这个问题的方法,PrivML是一个端到端外包的加密数据保密数据分类框架。我们提供了一些初步结果,将我们的建议与最先进的解决方案进行比较,并对我们的前瞻性研究计划提供了一些见解。
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Towards Practical Privacy-Preserving Collaborative Machine Learning at a Scale
Collaborative machine learning allows multiple participants to get a global and valuable insight over their joint data. Nonetheless, in data-sensitive applications, it is crucial to maintain confidentiality across the end-to-end path the data follows from model training phase to the inference phase, preventing any form of information leakage about training data, the learned model, or the inference queries. In this paper, we present our approach to addressing this problem through PrivML, a framework for end-to-end outsourced privacy-preserving data classification over encrypted data. We provide some preliminary results comparing our proposal with state of the art solutions as well as some insight on our prospective research plan.
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