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Injecting Differential Privacy in Rules Extraction of Rough Set

机译:在粗糙集规则提取中注入差异隐私

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Data mining plays a very important role in various database applications. Medical data mining has been a popular data mining application with a vital role in improving the quality of medical services and promoting the development of the medical industry. There has been extensive research in rough set theory (RST) to mine potential patterns in medical data, which has important implications for clinical decision support and online medical diagnosis. Although medical data mining is very promising, the rapid development of this field still faces many challenges, such as information security and privacy issues. Under the assumption that data miners cannot be trusted, this paper combines the differential privacy and rough set rules' extraction for the first time and proposes a new method to mine hidden patterns in medical data and ensure patient privacy. This algorithm uses the Laplacian mechanism to add noise to the credibility in the process of data mining while maximizing the utility of the data. Experiments show that our algorithm can effectively preserve the accuracy of data while protecting patient privacy.
机译:数据挖掘在各种数据库应用程序中扮演着非常重要的角色。医疗数据挖掘已成为流行的数据挖掘应用程序,对提高医疗服务质量和促进医疗行业的发展至关重要。粗糙集理论(RST)进行了广泛的研究,以挖掘医学数据中的潜在模式,这对临床决策支持和在线医学诊断具有重要意义。尽管医疗数据挖掘非常有前途,但是该领域的快速发展仍然面临许多挑战,例如信息安全和隐私问题。在不能相信数据挖掘者的前提下,本文首次将差分隐私和粗糙集规则的提取相结合,提出了一种挖掘医疗数据中隐藏模式并确保患者隐私的新方法。该算法在数据挖掘过程中使用拉普拉斯机制向可信度添加噪音,同时最大限度地提高了数据的实用性。实验表明,我们的算法可以有效地保持数据的准确性,同时保护患者的隐私。

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