Characterization of differentially private logistic regression

S. Suthaharan
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引用次数: 2

Abstract

The purpose of this paper is to present an approach that can help data owners select suitable values for the privacy parameter of a differentially private logistic regression (DPLR), whose main intention is to achieve a balance between privacy strength and classification accuracy. The proposed approach implements a supervised learning technique and a feature extraction technique to address this challenging problem and generate solutions. The supervised learning technique selects subspaces from a training data set and generates DPLR classifiers for a range of values of the privacy parameter. The feature extraction technique transforms an original subspace to a differentially private subspace by querying the original subspace multiple times using the DPLR model and the privacy parameter values that were selected by the supervised learning module. The proposed approach then employs a signal processing technique called signal-interference-ratio as a measure to quantify the privacy level of the differentially private subspaces; hence, allows data owner learn the privacy level that the DPLR models can provide for a given subspace and a given classification accuracy.
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差分私有逻辑回归的特征
本文的目的是提出一种方法,可以帮助数据所有者为差分私有逻辑回归(DPLR)的隐私参数选择合适的值,其主要目的是实现隐私强度和分类精度之间的平衡。该方法采用监督学习技术和特征提取技术来解决这一具有挑战性的问题并生成解决方案。监督学习技术从训练数据集中选择子空间,并为隐私参数的一系列值生成DPLR分类器。特征提取技术利用DPLR模型和监督学习模块选择的隐私参数值对原始子空间进行多次查询,将原始子空间转化为差分私有子空间。然后,该方法采用一种称为信号干扰比的信号处理技术作为度量来量化差分私有子空间的隐私级别;因此,允许数据所有者了解DPLR模型可以为给定子空间和给定分类精度提供的隐私级别。
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