CryptoML:大数据机器学习应用的安全外包

Azalia Mirhoseini, A. Sadeghi, F. Koushanfar
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引用次数: 12

摘要

我们提出了CryptoML,这是第一个实用的框架,用于在大量数据集上广泛的当代基于矩阵的机器学习(ML)应用程序的安全高效授权。在CryptoML中,具有内存和计算资源约束的委托客户机希望将存储和ml相关的计算分配给云服务器,同时保留其数据的隐私性。我们首先提出了委托性能成本的主要组成部分,并创建了一个矩阵草图技术,旨在通过数据预处理使成本最小化。然后,我们提出了一种新的基于可证明安全的Shamir秘密共享的交互式授权协议。该协议是为我们的新素描技术定制的,以最大限度地提高客户的资源效率。CryptoML在安全委托的效率和ML任务的准确性之间进行了新的权衡。概念验证评估证实了CryptoML对具有数十亿条非零记录的数据集的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CryptoML: Secure outsourcing of big data machine learning applications
We present CryptoML, the first practical framework for provably secure and efficient delegation of a wide range of contemporary matrix-based machine learning (ML) applications on massive datasets. In CryptoML a delegating client with memory and computational resource constraints wishes to assign the storage and ML-related computations to the cloud servers, while preserving the privacy of its data. We first suggest the dominant components of delegation performance cost, and create a matrix sketching technique that aims at minimizing the cost by data pre-processing. We then propose a novel interactive delegation protocol based on the provably secure Shamir's secret sharing. The protocol is customized for our new sketching technique to maximize the client's resource efficiency. CryptoML shows a new trade-off between the efficiency of secure delegation and the accuracy of the ML task. Proof of concept evaluations corroborate applicability of CryptoML to datasets with billions of non-zero records.
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