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A group-key-based sensitive attribute protection in cloud storage using modified random Fibonacci cryptography

机译:使用修改的随机斐波纳契加密云存储在云存储中基于群体基于敏感的属性保护

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Cloud computing is an eminent technology for providing a data storage facility with efficient storage, maintenance, management and remote backups. Hence, user data are shifted from customary storage to cloud storage. In this transfer, the sensitive attributes are also shifted to cloud storage with high-end security. Current security techniques are processed with high encryption time and provide identical security of entire data with single key dependent. These processes are taking high computational time and leaks entire information if the key is hacked. The proposed Group Key Based Attribute Encryption using Modified Random Fibonacci Cryptographic (MRFC) technique rectifies these issues. Instead of machine learning technique, data owner preference-based attributes segregation is used to divide an input dataset into sensitive and non-sensitive attribute groups. Based on inter-organization usage and data owner’s willingness, sensitive attribute is divided into ‘n?+?1′ subgroups and each subgroup is encrypted by ‘n?+?1’ group keys. The encrypted sensitive subgroups are merged with non-sensitive attributes and uploaded into a private cloud. The novelties of this paper are, (1) data owner preferred sensitive attribute classification instead of machine learning algorithms, (2) sensitive attribute encryption instead of entire attributes, (3) To reduce encryption time without compromising data owner privacy, (4) To decrypt and access the required subgroup instead of the entire attribute. Our experimental results show that, the proposed method takes minimal processing time, better classification accuracy and minimal memory space with high security to selected attributes as compared to existing classification and security techniques. Hence, sensitive data security and privacy is achieved with minimal processing cost.
机译:云计算是一种具有高效存储,维护,管理和远程备份的数据存储设施的杰出技术。因此,用户数据从常规存储转移到云存储。在此转移中,敏感属性也与高端安全性的云存储转移到云存储。当前的安全技术是通过高加密时间处理的,并提供单个键的整个数据的相同安全性。这些过程正在考虑高计算时间,如果密钥被攻击,则泄漏整个信息。使用修改的随机斐波纳契加密(MRFC)技术的建议组基于键的属性加密整流了这些问题。基于数据所有者首选项的属性分离而不是机器学习技术,用于将输入数据集划分为敏感和非敏感属性组。基于组织间使用和数据所有者的意愿,敏感属性被分成'n?+?1'子组,每个子组由'n?+ 1'组键加密。加密的敏感子组与非敏感属性合并并上传到私有云中。本文的新奇是(1)数据所有者优先敏感属性分类而不是机器学习算法,(2)敏感属性加密而不是整个属性,(3)来减少加密时间而不影响数据所有者隐私,(4)解密并访问所需子组而不是整个属性。我们的实验结果表明,与现有分类和安全技术相比,所提出的方法采用最小的处理时间,更好的分类精度和最小的内存空间,对所选属性具有高安全性。因此,以最少的处理成本实现敏感数据安全性和隐私。

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