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Preserving Privacy in Time Series Data Mining

机译:在时间序列数据挖掘中保护隐私

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摘要

Time series data mining poses new challenges to privacy. Through extensive experiments, the authors find that existing privacy-preserving techniques such as aggregation and adding random noise are insufficient due to privacy attacks such as dataflow separation attack. This paper also presents a general model for publishing and mining time series data and its privacy issues. Based on the model, a spectrum of privacy preserving methods is proposed. For each method, effects on classification accuracy, aggregation error, and privacy leak are studied. Experiments are conducted to evaluate the performance of the methods. The results show that the methods can effectively preserve privacy without losing much classification accuracy and within a specified limit of aggregation error.
机译:时间序列数据挖掘给隐私带来了新的挑战。通过广泛的实验,作者发现由于诸如数据流分离攻击之类的隐私攻击,诸如聚合和添加随机噪声之类的现有隐私保护技术是不够的。本文还提供了用于发布和挖掘时间序列数据及其隐私问题的通用模型。基于该模型,提出了一系列隐私保护方法。对于每种方法,都研究了对分类准确性,聚合错误和隐私泄漏的影响。进行实验以评估方法的性能。结果表明,该方法可以有效地保护隐私,而不会损失太多的分类精度,并且在指定的聚集误差范围内。

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