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Preserving Privacy in Time Series Data Classification by Discretization

机译:通过离散化在时间序列数据分类中保护隐私

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In this paper, we propose discretization-based schemes to preserve privacy in time series data mining. Traditional research on preserving privacy in data mining focuses on time-invariant privacy issues. With the emergence of time series data mining, traditional snapshot-based privacy issues need to be extended to be multi-dimensional with the addition of time dimension. In this paper, we defined three threat models based on trust relationship between the data miner and data providers. We propose three different schemes for these three threat models. The proposed schemes are extensively evaluated against public-available time series data sets [1]. Our experiments show that proposed schemes can preserve privacy with cost of reduction in mining accuracy. For most data sets, proposed schemes can achieve low privacy leakage with slight reduction in classification accuracy. We also studied effect of parameters of proposed schemes in this paper.
机译:在本文中,我们提出了基于离散化的方案来保护时序数据挖掘中的隐私。关于在数据挖掘中保护隐私的传统研究着眼于时不变的隐私问题。随着时间序列数据挖掘的出现,需要将传统的基于快照的隐私问题扩展到多维,并增加时间维度。在本文中,我们基于数据挖掘者和数据提供者之间的信任关系定义了三种威胁模型。对于这三种威胁模型,我们提出了三种不同的方案。所提出的方案已针对公共可用的时间序列数据集进行了广泛的评估[1]。我们的实验表明,提出的方案可以保护隐私,但会降低挖掘精度。对于大多数数据集,提出的方案可以实现较低的隐私泄漏,同时分类精度会稍有下降。我们还研究了所提出方案的参数的影响。

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