DPETs: A Differentially Private ExtraTrees

Chunmei Zhang, Yang Li, Zibin Chen
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引用次数: 1

Abstract

In this paper, we consider the problem of constructing private classifiers using extra decision trees, within the framework of differential privacy. We proposed a differential privacy classifier DPETs using Laplace mechanism and exponential mechanism in the construction of each decision tree during the process of splitting point and selecting attribute. We used the gini index as the scoring function of exponential mechanism, distributed the privacy budget dynamically by calculating its consumption and used Laplace mechanism adding count noise for the equivalence class. DPETs satisfies the requirement of differential privacy during the whole process. Due to the randomization in the process of feature selection and division, noise added to ensure the privacy was reduced compared with the construction of traditional differential private decision trees, so the accuracy of the classifier was improved especially in high dimensional datasets with discrete attributes.
DPETs:一种不同的私有树
在差分隐私框架下,我们考虑了使用额外决策树构造私有分类器的问题。提出了一种基于拉普拉斯机制和指数机制的差分隐私分类器DPETs,该算法在分离点和选择属性过程中分别构建决策树。我们使用基尼指数作为指数机制的评分函数,通过计算隐私预算的消耗来动态分配隐私预算,并使用拉普拉斯机制为等价类添加计数噪声。dpet在整个过程中满足差分隐私的要求。由于特征选择和划分过程中的随机化,与传统的差分私有决策树构造相比,减少了为保证隐私而添加的噪声,从而提高了分类器的准确率,特别是在具有离散属性的高维数据集上。
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