大医疗数据的深度限制和可加同态ElGamal隐私保护

K. Sujatha, V. Udayarani
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引用次数: 0

摘要

本文的目的是提高包含敏感信息的医疗保健数据集的隐私性。阻止隐私泄露和向合法用户提供相关信息同时被认为是不同的目标。此外,大数据的快速发展也为生活中的所有琐事提供了相当大的便利。就大数据时代而言,传播和信息共享被认为是两个主要方面。尽管在这些方面进行了一些研究工作,但随着数据的增量性质,通过大数据的各种好处,隐私泄露的可能性也大大增加。因此,在复杂环境下保护数据隐私已成为一个重大挫折。在本研究中,提出了一种深度受限加性同态ElGamal隐私保护(DR-AHEPP)方法,即使在增量数据的情况下也能保护数据的隐私。分别设计了一种基于熵的差分隐私准识别算法和DR-AHEPP算法,用于获得隐私保护的最小伪准标识集和计算效率高的隐私保护数据。使用Diabetes 130-US医院的分析结果表明,DR-AHEPP方法在保护增量数据隐私方面比现有方法更重要。对最先进的工作进行比较分析,以最大限度地减少信息丢失、误报率和执行时间,并提高准确性。独创性/价值本文采用Diabetes 130-US医院,达到准确率高、信息丢失少、假阳性率低的目的,提供了更好的性能。结果表明,与现有方法相比,该方法的准确率提高了4%,误报率和信息丢失分别降低了25%和35%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep restricted and additive homomorphic ElGamal privacy preservations over big healthcare data
PurposeThe purpose of this paper is to improve the privacy in healthcare datasets that hold sensitive information. Putting a stop to privacy divulgence and bestowing relevant information to legitimate users are at the same time said to be of differing goals. Also, the swift evolution of big data has put forward considerable ease to all chores of life. As far as the big data era is concerned, propagation and information sharing are said to be the two main facets. Despite several research works performed on these aspects, with the incremental nature of data, the likelihood of privacy leakage is also substantially expanded through various benefits availed of big data. Hence, safeguarding data privacy in a complicated environment has become a major setback.Design/methodology/approachIn this study, a method called deep restricted additive homomorphic ElGamal privacy preservation (DR-AHEPP) to preserve the privacy of data even in case of incremental data is proposed. An entropy-based differential privacy quasi identification and DR-AHEPP algorithms are designed, respectively, for obtaining privacy-preserved minimum falsified quasi-identifier set and computationally efficient privacy-preserved data.FindingsAnalysis results using Diabetes 130-US hospitals illustrate that the proposed DR-AHEPP method is more significant in preserving privacy on incremental data than existing methods. A comparative analysis of state-of-the-art works with the objective to minimize information loss, false positive rate and execution time with higher accuracy is calibrated.Originality/valueThe paper provides better performance using Diabetes 130-US hospitals for achieving high accuracy, low information loss and false positive rate. The result illustrates that the proposed method increases the accuracy by 4% and reduces the false positive rate and information loss by 25 and 35%, respectively, as compared to state-of-the-art works.
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