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Applying Moving Average Filtering for Non-interactive Differential Privacy Settings

机译:对非交互式差分隐私设置应用移动平均滤波

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One of the challenges of implementing differential data privacy, is that the utility (usefulness) of the privatized data tends to diminish even as confidentiality is guaranteed. In such settings, due to excessive noise, original data suffers loss of statistical significance despite the strong levels of confidentiality assured by differential privacy . This in turn makes the privatized data practically valueless to the consumer of the published data. Additionally, researchers have noted that finding equilibrium between data privacy and utility requirements remains intractable, necessitating trade- offs. Therefore, as a contribution, we propose using the moving average filtering model for non-interactive differential privacy settings. In this model, various levels of differential privacy (DP) are applied to a data set, generating a variety of privatized data sets. The privatized data is passed through a moving average filter and the new filtered privatized data sets that meet a set utility threshold are finally published. Preliminary results from this study show that adjustment of ? epsilon parameter in the differential privacy process, and the application of the moving average filter might generate better data utility output while conserving privacy in non-interactive differential privacy settings.
机译:实施差异数据隐私的挑战之一是,即使保证了机密性,私有化数据的效用(有用性)也趋于降低。在这种情况下,由于噪声过多,尽管差异性隐私确保了高度的机密性,但原始数据仍遭受统计意义的损失。反过来,这使得私有化数据对发布数据的使用者几乎毫无价值。此外,研究人员指出,在数据隐私和实用程序需求之间找到平衡点仍然很棘手,因此需要权衡取舍。因此,作为贡献,我们建议对非交互式差分隐私设置使用移动平均滤波模型。在此模型中,将各种级别的差异隐私(DP)应用于数据集,从而生成各种私有化的数据集。私有化的数据通过移动平均过滤器传递,并且最终会发布满足设置的实用程序阈值的新的经过过滤的私有化数据集。这项研究的初步结果表明对?差异隐私过程中的epsilon参数,移动平均滤波器的应用可能会产生更好的数据实用程序输出,同时在非交互式差异隐私设置中保留隐私。

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