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首页> 外文期刊>Information Sciences: An International Journal >Verifiable inner product computation on outsourced database for authenticated multi-user data sharing
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Verifiable inner product computation on outsourced database for authenticated multi-user data sharing

机译:验证的内部产品计算外包数据库,用于经过身份验证的多用户数据共享

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摘要

With the rapid development of cloud computing, the practical applications such as the machine learning based on the outsourced data have been investigated in the data sharing setting. In machine learning, the inner product is a necessary primitive to analyze the description statistics. However, the inner product computation in selective data sharing setting has not been fully considered. For this fact, we propose a verifiable inner product computation scheme based on Inner Product Functional Encryption (IPFE). IPFE is employed to preserve the outsourced data privacy and restrict the computation on the outsourced data to be inner product. To achieve the key privacy and result privacy, we transform the secret key into blinded form, which in turn results in a blinded result. With the aim of implementing access control over the data user and outsourced data, we design to let cloud server perform the authentication procedures before computing inner product. This can also eliminate most computational overhead resulting from the unauthorized data user and undesired data. As a result, only the authorized data user can obtain the inner product computed on the designated outsourced data. The proposed scheme is proved to be secure under the authentication model and the result unforgeability model. The performance evaluation shows that the proposed scheme is feasible. To achieve a better security level, the proposed scheme is extended to be secure against the corrupted cloud server. (C) 2020 Elsevier Inc. All rights reserved.
机译:随着云计算的快速发展,在数据共享设置中已经研究了基于外包数据的机器学习等实际应用。在机器学习中,内部产品是分析描述统计的必要原始原始原始原始。然而,选择性数据共享设置中的内部产品计算尚未得到完全考虑。为此,我们提出了一种基于内部产品功能加密(IPFE)的可验证内部产品计算方案。采用IPFE来保留外包数据隐私,并限制将外包数据的计算限制为内部产品。为实现关键隐私和结果隐私,我们将秘密键转换为盲目的形式,从而导致蒙蔽结果。旨在实现对数据用户和外包数据的访问控制,我们设计以让云服务器在计算内部产品之前执行身份验证过程。这也可以消除由未经授权的数据用户和不期望的数据产生的大多数计算开销。结果,只有授权的数据用户可以获得在指定的外包数据上计算的内部产品。在认证模型和结果不可变形模型下证明了所提出的方案是安全的。性能评估表明,该方案是可行的。为了实现更好的安全级别,建议的方案扩展到对损坏的云服务器安全。 (c)2020 Elsevier Inc.保留所有权利。

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