Data mining with differential privacy

Arik Friedman, A. Schuster
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引用次数: 473

Abstract

We consider the problem of data mining with formal privacy guarantees, given a data access interface based on the differential privacy framework. Differential privacy requires that computations be insensitive to changes in any particular individual's record, thereby restricting data leaks through the results. The privacy preserving interface ensures unconditionally safe access to the data and does not require from the data miner any expertise in privacy. However, as we show in the paper, a naive utilization of the interface to construct privacy preserving data mining algorithms could lead to inferior data mining results. We address this problem by considering the privacy and the algorithmic requirements simultaneously, focusing on decision tree induction as a sample application. The privacy mechanism has a profound effect on the performance of the methods chosen by the data miner. We demonstrate that this choice could make the difference between an accurate classifier and a completely useless one. Moreover, an improved algorithm can achieve the same level of accuracy and privacy as the naive implementation but with an order of magnitude fewer learning samples.
差分隐私的数据挖掘
给出了一个基于差分隐私框架的数据访问接口,研究了具有正式隐私保证的数据挖掘问题。差分隐私要求计算对任何特定个人记录的变化不敏感,从而限制了通过结果泄露数据。隐私保护接口确保对数据的无条件安全访问,并且不需要数据挖掘者具备任何隐私方面的专业知识。然而,正如我们在论文中所展示的,天真地利用接口来构建保护隐私的数据挖掘算法可能会导致较差的数据挖掘结果。我们通过同时考虑隐私和算法需求来解决这个问题,并将决策树归纳作为一个示例应用。隐私机制对数据挖掘器选择的方法的性能有深远的影响。我们证明,这种选择可以区分准确的分类器和完全无用的分类器。此外,改进的算法可以达到与原始实现相同的精度和隐私水平,但学习样本数量减少了一个数量级。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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