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Identification of Sensitive Items in Privacy Preserving - Association Rule Mining

机译:隐私保护中敏感项目的识别-关联规则挖掘

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The concept of Privacy-Preserving has recently been proposed in response to the concerns of preserving personal or sensible information derived from data mining algorithms. For example, through data mining, sensible information such as private information or patterns may be inferred from non-sensible information or unclassified data. As large repositories of data contain confidential rules that must be protected before published, association rule hiding becomes one of important privacy preserving data mining problems. There have been two types of privacy concerning data mining. Output privacy tries to hide the mining results by minimally altering the data. Input privacy tries to manipulate the data so that the mining result is not affected or minimally affected. For some applications certain sensitive predictive rules are hidden that contain given sensitive items. ? To identify the sensitive items an algorithm SENSIDENT is proposed. The results of the work have been given.
机译:响应于保护从数据挖掘算法获得的个人或敏感信息的关注,最近提出了隐私保护的概念。例如,通过数据挖掘,可以从不敏感信息或未分类数据中推断出敏感信息,例如私人信息或模式。由于大型数据存储库包含必须在发布之前受到保护的机密规则,因此关联规则隐藏成为重要的隐私保护数据挖掘问题之一。关于数据挖掘,有两种类型的隐私。输出隐私试图通过最小化数据更改来隐藏挖掘结果。输入隐私会尝试操纵数据,以使挖掘结果不受影响或受到最小影响。对于某些应用程序,某些敏感的预测规则被隐藏,其中包含给定的敏感项目。 ?为了识别敏感项目,提出了一种算法SENSIDENT。工作结果已经给出。

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