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An Effective Deferentially Private Data Releasing Algorithm for Decision Tree

机译:决策树的一种有效的防御性私有数据发布算法

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摘要

Differential privacy is a strong definition for protecting individual privacy in data releasing and mining. However, it is a rigid definition introducing a large amount of noise to the original dataset, which significantly decreases the quality of data mining results. Recently, how to design a suitable data releasing algorithm for data mining purpose is a hot research area. In this paper, we propose a differential private data releasing algorithm for decision tree construction. The proposed algorithm provides a non-interactive data releasing method through which miner can obtain the complete dataset for data mining purpose. With a given privacy budget, the proposed algorithm generalizes the original dataset, and then specializes it in a differential privacy constrain to construct decision trees. As the designed novel scheme selection operation can fully utilize the allocated privacy budget, the data set released by the proposed algorithm can yield better decision tree models than other method. Experimental results demonstrate that the proposed algorithm outperforms existing methods for private decision tree construction.
机译:差异隐私是在数据发布和挖掘中保护个人隐私的明确定义。但是,这是一个严格的定义,将大量噪声引入原始数据集,这大大降低了数据挖掘结果的质量。近年来,如何设计一种适合数据挖掘的数据发布算法成为研究的热点。在本文中,我们提出了一种用于决策树构建的差分私有数据发布算法。该算法提供了一种非交互的数据发布方法,矿工可以通过该方法获取完整的数据集以进行数据挖掘。在给定的隐私预算下,所提出的算法将原始数据集泛化,然后将其专门化为差分隐私约束以构造决策树。由于所设计的新颖方案选择操作可以充分利用分配的隐私预算,因此与其他方法相比,该算法所发布的数据集可以产生更好的决策树模型。实验结果表明,该算法优于现有的私有决策树构建方法。

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