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Fast clustering-based anonymization approaches with time constraints for data streams

机译:具有数据流时间约束的基于快速聚类的匿名化方法

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摘要

Research on the anonymization of static data has made great progress in recent years. Generalization and suppression are two common technologies for quasi-identifiers' anonymization. However, the characteristics of data streams, such as potential infinity and high dynamicity, make the anonymization of data streams different from the anonymization of static data. The methods for static data anonymization cannot be directly applied to anonymizing data streams. In this paper, a novel k-anonymization approach for data streams based on clustering is proposed. In order to speed up the anonymization process and reduce the information loss, the new approach scans a stream in one turn to recognize and reuse the clusters satisfying the k-anonymity principle. The time constraints on tuple publication and cluster reuse, which are specific to data streams, are considered as well. Furthermore, the approach is improved to conform to the ℓ-diversity principle. The experiments conducted on the real datasets show that the proposed methods are both efficient and effective.
机译:近年来,静态数据匿名化的研究取得了长足的进步。泛化和抑制是准标识符匿名化的两种常用技术。但是,数据流的特性(例如潜在的无穷大和高动态性)使数据流的匿名化不同于静态数据的匿名化。静态数据匿名化的方法不能直接应用于匿名数据流。本文提出了一种新的基于聚类的数据流k匿名化方法。为了加快匿名化过程并减少信息丢失,新方法轮流扫描流以识别和重用满足k-匿名性原则的群集。还考虑了特定于数据流的元组发布和集群重用的时间限制。此外,对该方法进行了改进以符合ℓ分集原则。在真实数据集上进行的实验表明,所提出的方法既有效又有效。

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