Hybrid Approach for Privacy Enhancement in Data Mining Using Arbitrariness and Perturbation

IF 2.2 4区 计算机科学 Q2 Computer Science
B. Murugeshwari, S. Rajalakshmi, K. Sudharson
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引用次数: 4

Abstract

Imagine numerous clients, each with personal data; individual inputs are severely corrupt, and a server only concerns the collective, statistically essential facets of this data. In several data mining methods, privacy has become highly critical. As a result, various privacy-preserving data analysis technologies have emerged. Hence, we use the randomization process to reconstruct composite data attributes accurately. Also, we use privacy measures to estimate how much deception is required to guarantee privacy. There are several viable privacy protections; however, determining which one is the best is still a work in progress. This paper discusses the difficulty of measuring privacy while also offering numerous random sampling procedures and statistical and categorized data results. Furthermore, this paper investigates the use of arbitrary nature with perturbations in privacy preservation. According to the research, arbitrary objects (most notably random matrices) have "predicted" frequency patterns. It shows how to recover crucial information from a sample damaged by a random number using an arbitrary lattice spectral selection strategy. This filtration system's conceptual framework posits, and extensive practical findings indicate that sparse data distortions preserve relatively modest privacy protection in various situations. As a result, the research framework is efficient and effective in maintaining data privacy and security.
利用任意和扰动增强数据挖掘中隐私的混合方法
想象一下,有很多客户,每个客户都有个人数据;个人输入严重损坏,服务器只关心这些数据的集体的、统计上重要的方面。在一些数据挖掘方法中,隐私已经变得非常重要。因此,各种保护隐私的数据分析技术应运而生。因此,我们使用随机化过程来准确地重建复合数据属性。此外,我们使用隐私措施来估计需要多少欺骗来保证隐私。有几种可行的隐私保护措施;然而,确定哪一个是最好的仍然是一个正在进行的工作。本文讨论了测量隐私的难度,同时也提供了大量随机抽样程序和统计和分类数据结果。此外,本文还研究了任意扰动性质在隐私保护中的应用。根据这项研究,任意物体(尤其是随机矩阵)都可以“预测”频率模式。它展示了如何使用任意晶格光谱选择策略从被随机数损坏的样本中恢复关键信息。该过滤系统的概念框架假设,广泛的实践发现表明,稀疏数据扭曲在各种情况下保持相对适度的隐私保护。因此,研究框架在维护数据隐私和安全方面是高效和有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Computer Systems Science and Engineering
Computer Systems Science and Engineering 工程技术-计算机:理论方法
CiteScore
3.10
自引率
13.60%
发文量
308
审稿时长
>12 weeks
期刊介绍: The journal is devoted to the publication of high quality papers on theoretical developments in computer systems science, and their applications in computer systems engineering. Original research papers, state-of-the-art reviews and technical notes are invited for publication. All papers will be refereed by acknowledged experts in the field, and may be (i) accepted without change, (ii) require amendment and subsequent re-refereeing, or (iii) be rejected on the grounds of either relevance or content. The submission of a paper implies that, if accepted for publication, it will not be published elsewhere in the same form, in any language, without the prior consent of the Publisher.
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