Privacy-preserving SVM using nonlinear kernels on horizontally partitioned data

Hwanjo Yu, Xiaoqian Jiang, Jaideep Vaidya
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引用次数: 220

Abstract

Traditional Data Mining and Knowledge Discovery algorithms assume free access to data, either at a centralized location or in federated form. Increasingly, privacy and security concerns restrict this access, thus derailing data mining projects. What we need is distributed knowledge discovery that is sensitive to this problem. The key is to obtain valid results, while providing guarantees on the non-disclosure of data. Support vector machine classification is one of the most widely used classification methodologies in data mining and machine learning. It is based on solid theoretical foundations and has wide practical application. This paper proposes a privacy-preserving solution for support vector machine (SVM) classification, PP-SVM for short. Our solution constructs the global SVM classification model from the data distributed at multiple parties, without disclosing the data of each party to others. We assume that data is horizontally partitioned -- each party collects the same features of information for different data objects. We quantify the security and efficiency of the proposed method, and highlight future challenges.
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基于非线性核的支持向量机在水平分区数据上的隐私保护
传统的数据挖掘和知识发现算法假定可以自由访问集中位置或联邦形式的数据。越来越多的隐私和安全问题限制了这种访问,从而使数据挖掘项目脱轨。我们需要的是对这个问题敏感的分布式知识发现。关键是获得有效的结果,同时保证数据的不公开。支持向量机分类是数据挖掘和机器学习中应用最广泛的分类方法之一。它有着坚实的理论基础和广泛的实际应用。本文提出了一种支持向量机(SVM)分类的隐私保护方案,简称PP-SVM。我们的方案从分布在多方的数据中构建全局SVM分类模型,而不将每一方的数据泄露给其他方。我们假设数据是水平分区的——每一方为不同的数据对象收集相同的信息特征。我们量化了所提出方法的安全性和效率,并强调了未来的挑战。
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