垂直分区数据分布式支持向量机数据挖掘中的隐私保护

Mohammed Z. Omer, Hui Gao, Faisal Sayed
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引用次数: 6

摘要

数据挖掘算法可以默认地访问集中式或分布式形式的数据。分布式数据是一个巨大的挑战,传统的分析工具无法处理。云计算可以解决在云中的分布位置处理、存储和分析数据的问题。然而,阻碍数据自由共享的一个重要问题是隐私和安全问题,因此阻碍了数据挖掘方案。最近,越来越难找到解决这些问题的办法。由于现有的知识在数据上更加的分布式和更好的用于数据挖掘的问题。数据挖掘和机器学习的一个重要任务就是分类,在分类中应用广泛的是支持向量机(SVM)算法,适用于许多不同的领域。本文提出了一种支持向量机分类的隐私保护方案。我们的解决方案是基于Gram矩阵从多方垂直划分的分布式数据构建全局SVM分类模型,而不暴露一方的数据。提出了一种高效且保护隐私的支持向量机垂直分区数据分类协议。实验结果表明,使用Gram矩阵的分布式支持向量机准确率高达90%,且不影响隐私。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Privacy Preserving in Distributed SVM Data Mining on Vertical Partitioned Data
Data mining algorithms tacitly quite access to the data either at centralized or distributed form. Distributed data becomes a big challenge and cannot handle by a classical analytic tool. Cloud Computing can solve the issues of processing, storing, and analyzing the data at distributing locations within the cloud. However, a significant problem that is preventing free sharing of data is privacy and security issues, therefore obstructing data mining schemes. Lately, there is increasingly hard to find a solution to these problems. Due to the existing knowledge in a more distributed data and better for data mining issues. An important task of data mining and machine learning is classification, a widely used in classification is support vector machine (SVM) algorithms applicable in many various domains. In this paper, we proposes a privacy-preserving solution for SVM classification. Our workaround constructing a global SVM classification model from vertically partitioned distributed data at multi-parties based on Gram matrix, without revealing a party's data. We proposed an efficient and preserve privacy protocol for SVM classification on vertical partitioned data. Our experimental results, the accuracy of distributed SVM using Gram matrix up to 90% and the privacy not compromised.
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