A Differentially Private Classification Algorithm With High Utility for Wireless Body Area Networks

Xianwen Sun, Lingyun Shi, Longfei Wu, Zhitao Guan, Xiaojiang Du, M. Guizani
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引用次数: 1

Abstract

The advancement of the wireless body area networks (WBAN) and sensor technologies allows us to collect a variety of physiological and behavioral data from human body. And appropriate application of machine learning methods can greatly promote the development of e-health. Nevertheless, the collected data contains personal privacy information. When using the machine learning methods to analyze the collected data, some information of the training data will be stored in the learning models unconsciously. To handle such information disclosure problem, we propose a differentially private classification algorithm based on ensemble decision tree with high utility for wireless body area networks. In order to improve the accuracy and stableness of classification, the bagging framework of ensemble learning is used in our algorithm. We aggregate the results of multiple private decision trees as the final classification in a weight-based voting way. For each private decision tree trained on the bootstrap samples, we offer a novel privacy budget allocation strategy that allows the nodes in larger depth to get more privacy budget, which can mitigate the problem of excessive noise introduced to leaf nodes to some extent. The better classification accuracy and stableness of this new algorithm, especially on small dataset, are demonstrated by simulation experiments.
一种实用的无线体域网络差分私有分类算法
无线身体区域网络(WBAN)和传感器技术的进步使我们能够从人体收集各种生理和行为数据。适当地应用机器学习方法可以极大地促进电子医疗的发展。然而,收集的数据包含个人隐私信息。在使用机器学习方法对收集到的数据进行分析时,训练数据中的一些信息会在不知不觉中存储在学习模型中。为了解决这类信息泄露问题,提出了一种基于集成决策树的差分私有分类算法,该算法在无线体域网络中具有较高的实用性。为了提高分类的准确性和稳定性,我们在算法中采用了集成学习的bagging框架。我们将多个私人决策树的结果以基于权重的投票方式汇总作为最终分类。对于每个在bootstrap样本上训练的私有决策树,我们提出了一种新的隐私预算分配策略,该策略允许深度较大的节点获得更多的隐私预算,从而在一定程度上缓解了叶节点引入过多噪声的问题。仿真实验表明,该算法具有较好的分类精度和稳定性,特别是在小数据集上。
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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