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Modeling and Integrating Background Knowledge in Data Anonymization

机译:数据匿名化中背景知识的建模和集成

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Recent work has shown the importance of considering the adversary's background knowledge when reasoning about privacy in data publishing. However, it is very difficult for the data publisher to know exactly the adversary's background knowledge. Existing work cannot satisfactorily model background knowledge and reason about privacy in the presence of such knowledge.This paper presents a general framework for modeling the adversary's background knowledge using kernel estimation methods. This framework subsumes different types of knowledge (e.g., negative association rules) that can be mined from the data. Under this framework, we reason about privacy using Bayesian inference techniques and propose the skyline (B, t)-privacy model, which allows the data publisher to enforce privacy requirements to protect the data against adversaries with different levels of background knowledge. Through an extensive set of experiments, we show the effects of probabilistic background knowledge in data anonymization and the effectiveness of our approach in both privacy protection and utility preservation.
机译:最近的工作表明,在数据发布中对隐私进行推理时,必须考虑对手的背景知识。但是,数据发布者很难准确地了解对手的背景知识。现有的工作无法令人满意地对背景知识和存在隐私的原因进行建模。本文提出了一种使用核估计方法对对手的背景知识进行建模的通用框架。该框架包含可以从数据中挖掘的不同类型的知识(例如,否定关联规则)。在此框架下,我们使用贝叶斯推理技术对隐私进行推理,并提出了天际线(B,t)-隐私模型,该模型允许数据发布者强制执行隐私要求,以保护数据免受具有不同背景知识水平的对手的侵害。通过广泛的实验,我们展示了概率背景知识在数据匿名化中的作用以及我们的方法在隐私保护和实用程序保存方面的有效性。

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