Efficient Secure Outsourcing of Large-scale Quadratic Programs

Sergio Salinas, Changqing Luo, Weixian Liao, Pan Li
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引用次数: 23

Abstract

The massive amount of data that is being collected by today's society has the potential to advance scientific knowledge and boost innovations. However, people often lack sufficient computing resources to analyze their large-scale data in a cost-effective and timely way. Cloud computing offers access to vast computing resources on an on-demand and pay-per-use basis, which is a practical way for people to analyze their huge data sets. However, since their data contain sensitive information that needs to be kept secret for ethical, security, or legal reasons, many people are reluctant to adopt cloud computing. For the first time in the literature, we propose a secure outsourcing algorithm for large-scale quadratic programs (QPs), which is one of the most fundamental problems in data analysis. Specifically, based on simple linear algebra operations, we design a low-complexity QP transformation that protects the private data in a QP. We show that the transformed QP is computationally indistinguishable under a chosen plaintext attack (CPA), i.e., CPA-secure. We then develop a parallel algorithm to solve the transformed QP at the cloud, and efficiently find the solution to the original QP at the user. We implement the proposed algorithm on the Amazon Elastic Compute Cloud (EC2) and a laptop. We find that our proposed algorithm offers significant time savings for the user and is scalable to the size of the QP.
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大规模二次型规划的高效安全外包
当今社会正在收集的大量数据具有推进科学知识和推动创新的潜力。然而,人们往往缺乏足够的计算资源,无法高效、及时地分析海量数据。云计算以按需和按使用付费的方式提供了对大量计算资源的访问,这是人们分析庞大数据集的一种实用方法。然而,由于他们的数据包含出于道德、安全或法律原因需要保密的敏感信息,许多人不愿意采用云计算。在文献中,我们首次提出了一种安全外包算法,用于大规模二次规划(QPs),这是数据分析中最基本的问题之一。具体来说,我们基于简单的线性代数运算,设计了一种低复杂度的QP变换,以保护QP中的私有数据。我们证明了在选择的明文攻击(CPA)下,转换后的QP在计算上是不可区分的,即CPA安全。然后,我们开发了一种并行算法来解决在云上转换的QP,并有效地找到原始QP在用户处的解。我们在Amazon Elastic Compute Cloud (EC2)和笔记本电脑上实现了所提出的算法。我们发现我们提出的算法为用户节省了大量的时间,并且可以扩展到QP的大小。
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