Privacy Preserving Classification in Two-Dimension Distributed Data

Luong The Dung, H. Bao, Nguyễn Thế Bình, T. Hoang
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引用次数: 2

Abstract

Within the context of privacy preserving data mining, several solutions for privacy-preserving classification rules learning such as association rules mining have been proposed. Each solution was provided for horizontally or vertically distributed scenario. The aim of this work is to study privacy-preserving classification rules learning in two-dimension distributed data, which is a generalisation of both horizontally and vertically distributed data. In this paper, we develop a cryptographic solution for classification rules learning methods. The crucial step in the proposed solution is the privacy-preserving computation of frequencies of a tuple of values, which can ensure each participant's privacy without loss of accuracy. We illustrate the applicability of the method by using it to build the privacy preserving protocol for association rules mining and ID3 decision tree learning
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二维分布式数据中的隐私保护分类
在保护隐私数据挖掘的背景下,提出了一些保护隐私分类规则学习的解决方案,如关联规则挖掘。每种解决方案针对水平或垂直分布的场景提供。本工作的目的是研究二维分布式数据中保护隐私的分类规则学习,二维分布式数据是水平分布和垂直分布数据的概括。在本文中,我们开发了一种用于分类规则学习方法的密码学解决方案。该方案的关键步骤是对一组值的频率进行隐私保护计算,在不损失准确性的前提下保证每个参与者的隐私。通过构建用于关联规则挖掘和ID3决策树学习的隐私保护协议,说明了该方法的适用性
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