k-匿名化时间序列ngram的隐私保护

Mohammad-Reza Zare-Mirakabad, F. Kaveh-Yazdy, Mohammad Tahmasebi
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引用次数: 7

摘要

时间序列数据(如ECG)可以公开共享,用于数据挖掘应用和研究。这种类似于其他类型数据的数据可能被攻击者非法利用,从而泄露个人身份。为了防止再次识别,引入了许多k-匿名化方法。预测模型使用时间序列的概率来预测未来的值。本文提出了一种时间序列Ngram模型的k-匿名化算法。它将时间序列中频率保证至少为k的稀有ngram隐藏在所有其他ngram之间。在实时时间序列上使用所提出的算法以最大2%的信息损失显示其有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Privacy preservation by k-anonymizing Ngrams of time series
Time series data, such as ECG, can be shared publicly for data mining applications and researches. This data similar to different kind of data types could be illegally exploited by an adversary to reveal identity of an individual. To prevent re-identification, many k-anonymization methods are introduced. Predictive models use probabilities of Ngrams of time series to predict future values. In this paper we propose an algorithm for k-anonymization of Ngram models of time series. It hides rare Ngrams of the time series between all other Ngrams that their frequencies are guaranteed to be at least k. Utilizing proposed algorithm on the real time series shows its effectivity by maximum information loss 2%.
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