一种保护房地产数据隐私的混合方法

Parmod Kalia, D. Bansal, S. Sofat
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引用次数: 3

摘要

在当今的数字世界中,互联网的使用量增加了许多倍,因为用户已经变得依赖于基于云的应用程序。在这些平台上披露个人信息成为攻击的潜在威胁。研究人员使用随机数据失真技术加上随机噪声来隐藏敏感数据,使其不被未经授权的对手发现。这种微扰技术只适用于数值数据集。本文提出了一种加性随机噪声值的两阶段编码混合模型,以确保隐私和敏感信息的不泄露,并保持数据隐私和数据效用之间的有效平衡。在房地产行业的不同数据规模上,对所提出的技术在保护隐私和数据效用方面的效率和有效性进行了测试。从隐私级别和信息丢失两方面对该算法进行了评价。与其他隐私保护技术(如扰动和加密)相比,它在空间复杂性和效率方面证明是有效的。
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A hybrid approach for preserving privacy for real estate data
In the present digital world, usage of the internet has increased many folds as users have become dependent on the cloud-based applications. The disclosure of personal information on such platforms becomes a prospective threat for an attack. Researchers have used randomised data distortion technique with addition of random noise to conceal the sensitive data from an unauthorised adversary. This perturbation technique has relevance for the numerical datasets only. In this paper, we propose a hybrid model of two phases encoding with additive random noise value for ensuring non-disclosure of private and sensitive information and maintaining an effective balance between data privacy and data utility. The proposed technique has been tested on different data sizes of the real estate industry in terms of efficiency and effectiveness in preserving privacy and data utility. The proposed algorithm has been evaluated in terms of privacy level and information loss. It has proved effective in comparison with other privacy-preserving techniques such as perturbation and encryption in terms of space complexity and efficiency.
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