术语关系对匿名化的意义

B. Anandan, Chris Clifton
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引用次数: 26

摘要

数据共享为研究界提供了巨大的利益。但是,泄露可识别的、敏感的信息,如医疗记录,可能会造成无法弥补的损害。已经提出了许多方法来匿名化敏感信息。使用某些方法,数据中的术语关系可能有助于在给定去标识数据的情况下重新标识原始数据。本文首先研究了数据中相关性的重要性,然后分析了对匿名化技术的影响,包括t似然性和k匿名性。最后,我们展示了如何在可信性模型中处理相关性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Significance of Term Relationships on Anonymization
Sharing data provides great benefit to the research community. But disclosing identifiable, sensitive information such as medical records can cause irreparable damage. A number of methods have been proposed to anon Mize sensitive information. With some approaches, term relationships in the data may help to re-identify the original data given the de-identified data. This papers studies the significance of correlation in data and then analyzes the effect on anonymization techniques including t-plausibility and k-manonymity. Finally, we show how to address correlation in thet-plausibility model.
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