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MR-Anonymization: A Relationship-based Privacy Model

机译:MR-ANYOWAYIFICE:基于关系的隐私模型

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摘要

There are several reasons for organizations to publish or share their data. Therefore, ensuring the privacy of individual information is a serious issue. A typical medical organization must publish data about thousands of patients that contain detailed information about each patient. There may be several vulnerable relationships in the data that may lead to identities being exposed. For example, certain diseases are usually associated with groups of a particular age, gender, location, or ethnicity. Data exposure is not limited to specific types of attacks; attackers often try to find vulnerable relationships between data that may lead to exposure of identities. Therefore, the clustering method must be used to find more relationships between large amounts of data. The model provided in this paper aims to improve the concept of data anonymity by proposing an anonymization method that focuses on critical relationships between data. The main idea behind MR-Anonymization is to apply the clustering technique in order to find leakages in such a large dataset.
机译:组织有几个原因可以发布或分享其数据。因此,确保个人信息的隐私是一个严重的问题。典型的医疗组织必须发布大约数千名患者的数据,其中包含有关每位患者的详细信息。在数据中可能有几个易受攻击的关系可能导致身份暴露。例如,某些疾病通常与特定年龄,性别,地点或种族的群体相关联。数据曝光不限于特定类型的攻击;攻击者经常试图在数据之间找到可能导致身份曝光的数据之间的脆弱关系。因此,必须使用群集方法来查找大量数据之间的更多关系。本文提供的模型旨在通过提出一个侧重于数据之间的关键关系的匿名方法来改善数据匿名的概念。 MR-Anymalization背后的主要思想是应用群集技术,以便在这样的大型数据集中找到泄漏。

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