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A Privacy-Preserving Twin Support Vector Machine Classifier for Vertical Partitioned Data

机译:垂直分区数据的隐私保留双胞胎支持向量机分类器

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In this paper, a novel privacy-preserving binary classifier termed as break Privacy Preservation Twin Support Vector Machine (PPTWS VM) has been proposed. The PPTWSVM formulation is motivated by the Privacy-Preserving Support Vector Machine (PPSVM) formulations of Mangasarian and Wild (Mangasarian et al. in ACM Trans Knowl Discov Data 2(3),12, 2008 [1]; Mangasarian and Edward in Privacy-preserving classification of horizontally partitioned data via random Kernels, 2008 [2]; Mangasarian and Edward in Privacy-preserving random Kernel classification of checkerboard partitioned data. Data mining. Springer, USA, 2010 [3]) and Twin Support Vector Machine (TWSVM) formulation of Jayadeva et al. (IEEE Trans Pattern Anal Mach Intell 29(5):905-910, 2007 [4]; Khemchandani and Chandra in Twin support vector machines: models, extensions and applications. Springer, 2016 [5]). Similar to PPSVM, PPTWSVM also employs the random kernel technique for preserving the privacy of participating entities which are holding the different feature columns of the representing data. An extensive numerical implementation on UCI benchmark datasets confirms that PPTWSVM is faster than PPSVM in the training phase and owns better generalization ability.
机译:在本文中,已经提出了一种作为中断隐私保存双支持向量机(PPTWS VM)的新型隐私保留二进制分类器。 PPTWSVM制定是由空中保存的支持向量机(PPSVM)配方的激励(Mangasarian等人。在ACM Trans Kiscov Data 2(3),2008 [1]中; Mangasanian和Edward在隐私 - 通过随机内核保留水平分区数据的分类,2008 [2];历史保留的棋盘分区数据的隐私随机内核分类中的登录和爱德华。数据挖掘。Springer,USA,2010 [3])和双支持向量机(TWSVM) Jayadeva等人的制剂。 (IEEE Trans Pattern Ang Mach Intell 29(5):905-910,2007 [4]; Khemchandani和Chandra在双胞胎支持向量机:模型,扩展和应用程序。Springer,2016 [5])。类似于PPSVM,PPTWSVM还采用随机内核技术,以保留正在保持表示数据的不同特征列的参与实体的隐私。 UCI基准数据集上的广泛数值实现确认PPTWSVM比训练阶段的PPSVM更快,拥有更好的泛化能力。

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