A Homomorphic Cloud Framework for Big Data Analytics Based on Elliptic Curve Cryptography

Z. Salman, M. Hammad, A. Al-Omary
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引用次数: 2

Abstract

Homomorphic Encryption (HE) comes as a sophisticated and powerful cryptography system that can preserve the privacy of data in all cases when the data is at rest or even when data is in processing and computing. All the computations needed by the user or the provider can be done on the encrypted data without any need to decrypt it. However, HE has overheads such as big key sizes and long ciphertexts and as a result long execution time. This paper proposes a novel solution for big data analytic based on clustering and the Elliptical Curve Cryptography (ECC). The Extremely Distributed Clustering technique (EDC) has been used to divide big data into several subsets of cloud computing nodes. Different clustering techniques had been investigated, and it was found that using hybrid techniques can improve the performance and efficiency of big data analytic while at the same time data is protected and privacy is preserved using ECC.
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基于椭圆曲线密码的大数据分析同态云框架
同态加密(HE)是一种复杂而强大的加密系统,可以在所有情况下保护数据的隐私,无论数据处于静止状态,还是数据处于处理和计算过程中。用户或提供者所需的所有计算都可以在加密数据上完成,而无需对其进行解密。然而,HE有开销,比如大的密钥大小和长密文,因此执行时间长。提出了一种基于聚类和椭圆曲线密码学的大数据分析新方案。极端分布式聚类技术(EDC)被用于将大数据划分为多个云计算节点子集。研究了不同的聚类技术,发现混合聚类技术可以提高大数据分析的性能和效率,同时使用ECC保护数据和隐私。
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