An ensemble learning model based on differentially private decision tree

被引:0
|
作者
Xufeng Niu
Wenping Ma
机构
[1] Xidian University,School of Telecommunication Engineering
[2] State Key Laboratory of Cryptology,undefined
来源
关键词
Decision tree; Differential privacy; Ensemble learning; Quantum genetic algorithm;
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学科分类号
摘要
Using differential privacy to provide privacy protection for classification algorithms has become a research hotspot in data mining. In this paper, we analyze the defects in the differentially private decision tree named Maxtree, and propose an improved model DPtree. DPtree can use the Fayyad theorem to process continuous features quickly, and can adjust privacy budget adaptively according to sample category distributions in leaf nodes. Moreover, to overcome the inevitable decline of classification ability of differentially private decision trees, we propose an ensemble learning model for DPtree, namely En-DPtree. In the voting process of En-DPtree, we propose a multi-population quantum genetic algorithm, and introduce immigration operators and elite groups to search the optimal weights for base classifiers. Experiments show that the performance of DPtree is better than Maxtree, and En-DPtree is always superior to other competitive algorithms.
引用
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页码:5267 / 5280
页数:13
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