Random forest algorithm under differential privacy

Zekun Li, Shuyu Li
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引用次数: 6

Abstract

Trying to solve the risk of data privacy disclosure in classification process, a Random Forest algorithm under differential privacy named DPRF-gini is proposed in the paper. In the process of building decision tree, the algorithm first disturbed the process of feature selection and attribute partition by using exponential mechanism, and then meet the requirement of differential privacy by adding Laplace noise to the leaf node. Compared with the original algorithm, Empirical results show that protection of data privacy is further enhanced while the accuracy of the algorithm is slightly reduced.
差分隐私下的随机森林算法
为了解决分类过程中数据隐私泄露的风险,本文提出了一种差分隐私下的随机森林算法DPRF-gini。在构建决策树的过程中,该算法首先利用指数机制干扰特征选择和属性划分过程,然后通过在叶节点上加入拉普拉斯噪声来满足差分隐私的要求。实证结果表明,与原算法相比,该算法对数据隐私的保护进一步增强,但算法的准确性略有降低。
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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