Efficient Verifiable Computation of Linear and Quadratic Functions over Encrypted Data

Ngoc Hieu Tran, HweeHwa Pang, R. Deng
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引用次数: 11

Abstract

In data outsourcing, a client stores a large amount of data on an untrusted server; subsequently, the client can request the server to compute a function on any subset of the data. This setting naturally leads to two security requirements: confidentiality of input data, and authenticity of computations. Existing approaches that satisfy both requirements simultaneously are built on fully homomorphic encryption, which involves expensive computation on the server and client and hence is impractical. In this paper, we propose two verifiable homomorphic encryption schemes that do not rely on fully homomorphic encryption. The first is a simple and efficient scheme for linear functions. The second scheme supports the class of multivariate quadratic functions, by combining the Paillier cryptosystem with a new homomorphic message authentication code (MAC) scheme. Through formal security analysis, we show that the schemes are semantically secure and unforgeable.
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加密数据上线性和二次函数的有效可验证计算
在数据外包中,客户端将大量数据存储在不受信任的服务器上;随后,客户机可以请求服务器在数据的任意子集上计算函数。这种设置自然会导致两个安全需求:输入数据的机密性和计算的真实性。同时满足这两种需求的现有方法是建立在完全同态加密的基础上的,这涉及到服务器和客户机上昂贵的计算,因此是不切实际的。本文提出了两种不依赖于完全同态加密的可验证同态加密方案。第一个是简单有效的线性函数格式。第二种方案通过将Paillier密码系统与一种新的同态消息认证码(MAC)方案相结合,支持多元二次函数类。通过形式化的安全性分析,证明了该方案具有语义安全性和不可伪造性。
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