公共云中大图的保密性谱分析

Sagar Sharma, James Powers, Keke Chen
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引用次数: 9

摘要

大型图数据集已经成为在商业应用和科学研究中研究问题的宝贵资产。这些由数据所有者收集和拥有的数据集也可能包含隐私敏感信息。当使用公共云进行弹性处理时,数据所有者必须保护数据所有权和隐私,以免受到好奇的云提供商的攻击。我们提出了一个以云为中心的框架,允许数据所有者有效地从分布式数据贡献者那里收集图形数据,并在云中存储和分析图形数据。数据所有者可以在不受信任的公共云中进行昂贵的操作,同时保留隐私和可伸缩性。这项工作的主要贡献包括用于大型图矩阵谱分析的两种保护隐私的近似特征分解算法(安全的Lanczos和Nystrom方法),以及基于差分隐私的个性化保护隐私数据提交方法,该方法允许在数据稀疏性和隐私之间进行权衡。对于N个节点的图,建议的方法允许数据所有者在计算、存储和通信方面仅花费O(N)客户端成本来完成核心操作。使用所提出的隐私保护算法在云中执行昂贵的O(N2)操作。我们证明,我们的方法可以令人满意地保护数据隐私,防止不受信任的云提供商。我们进行了广泛的实验研究,从成本、隐私、可扩展性和结果质量之间的内在关系来研究这些算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Privacy-Preserving Spectral Analysis of Large Graphs in Public Clouds
Large graph datasets have become invaluable assets for studying problems in business applications and scientific research. These datasets, collected and owned by data owners, may also contain privacy-sensitive information. When using public clouds for elastic processing, data owners have to protect both data ownership and privacy from curious cloud providers. We propose a cloud-centric framework that allows data owners to efficiently collect graph data from the distributed data contributors, and privately store and analyze graph data in the cloud. Data owners can conduct expensive operations in untrusted public clouds with privacy and scalability preserved. The major contributions of this work include two privacy-preserving approximate eigen decomposition algorithms (the secure Lanczos and Nystrom methods) for spectral analysis of large graph matrices, and a personalized privacy-preserving data submission method based on differential privacy that allows for the trade-off between data sparsity and privacy. For a N-node graph, the proposed approach allows a data owner to finish the core operations with only O(N) client-side costs in computation, storage, and communication. The expensive O(N2) operations are performed in the cloud with the proposed privacy-preserving algorithms. We prove that our approach can satisfactorily preserve data privacy against the untrusted cloud providers. We have conducted an extensive experimental study to investigate these algorithms in terms of the intrinsic relationships among costs, privacy, scalability, and result quality.
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