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Privacy-preserving data outsourcing in the cloud via semantic data splitting

机译:通过语义数据拆分在云中保护隐私的数据外包

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摘要

Even though cloud computing provides many intrinsic benefits (e.g., cost savings, availability, scalability, etc.), privacy concerns related to the lack of control over the storage and management of the out sourced (confidential) data still prevent many customers from migrating to the cloud. In this respect, several privacy-protection mechanisms based on a prior encryption of the data to be outsourced have been proposed. Data encryption offers robust security, but at the cost of hampering the efficiency of the service and limiting the functionalities that can be applied over the (encrypted) data stored on cloud premises. Because both efficiency and functionality are crucial advantages of cloud computing, especially in SaaS, in this paper we aim at retaining them by proposing a privacy-protection mechanism that relies on splitting (clear) data, and on the distributed storage offered by the increasingly popular notion of multi-clouds. Specifically, we propose a semantically-grounded data splitting mechanism that is able to automatically detect pieces of data that may cause privacy risks and split them on local premises, so that each chunk does not incur in those risks; then, chunks of clear data are independently stored into the separate locations of a multi-cloud, so that external entities (cloud service providers and attackers) cannot have access to the whole confidential data. Because partial data are stored in clear on cloud premises, outsourced functionalities are seamlessly and efficiently supported by just broadcasting queries to the different cloud locations. To enforce a robust privacy notion, our proposal relies on a privacy model that offers a priori privacy guarantees; to ensure its feasibility, we have designed heuristic algorithms that minimize the number of cloud storage locations we need; to show its potential and generality, we have applied it to the least structured and most challenging data type: plain textual documents. (C) 2017 Elsevier B.V. All rights reserved.
机译:尽管云计算提供了许多内在的好处(例如,节省成本,可用性,可伸缩性等),但由于缺乏对外包(机密)数据的存储和管理的控制权而引起的隐私问题仍然阻止了许多客户迁移到云端。在这方面,已经提出了几种基于将要外包的数据的事先加密的隐私保护机制。数据加密可提供强大的安全性,但以牺牲服务效率和限制可应用于存储在云场所的(加密)数据的功能为代价。由于效率和功能性都是云计算的关键优势,尤其是在SaaS中,因此,本文旨在通过提出一种隐私保护机制来保留它们,这些机制依赖于拆分(清晰)数据以及日益流行的分布式存储,以保留它们。多云的概念。具体来说,我们提出了一种基于语义的数据拆分机制,该机制能够自动检测可能导致隐私风险的数据并将其在本地进行拆分,以免每个数据块都不会招致这些风险。然后,将大量的清晰数据独立存储到多云的单独位置中,从而使外部实体(云服务提供商和攻击者)无法访问整个机密数据。由于部分数据清晰地存储在云环境中,因此只需将查询广播到不同的云位置即可无缝且有效地支持外包功能。为了实施可靠的隐私概念,我们的建议依赖于提供先验隐私保证的隐私模型。为了确保其可行性,我们设计了启发式算法,以最大程度地减少所需的云存储位置的数量。为了展示其潜力和普遍性,我们将其应用于结构最简单,最具挑战性的数据类型:纯文本文档。 (C)2017 Elsevier B.V.保留所有权利。

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