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SN-SVM: a sparse nonparametric support vector machine classifier - Springer

机译:SN-SVM:稀疏非参数支持向量机分类器-Springer

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摘要

This paper introduces a novel sparse nonparametric support vector machine classifier (SN-SVM) which combines data distribution information from two state-of-the-art kernel-based classifiers, namely, the kernel support vector machine (KSVM) and the kernel nonparametric discriminant (KND). The proposed model incorporates some near-global variations of the data provided by the KND and, hence, may be viewed as an extension to the KSVM. Similarly, since the support vectors improve the choice of (kappa )-nearest neighbors ((kappa -NN)’s), it can also serve as an extension to the KND. The proposed model is capable of dealing with both heteroscedastic and non-normal data while avoiding the small sample size problem. The model is a convex quadratic optimization problem with one global optimal solution, so it can be estimated easily and efficiently using numerical methods. It can also be reduced to the classical KSVM model and as such existing SVM programs can be used for easy implementation. Through the Bayesian interpretation with the help of a Gaussian prior, we show that our method provides a sparse solution by assigning non-zero weights to only a fraction of the total number of training samples. This sparsity can be used by existing sparse classification algorithms to obtain better computational efficiency. The experimental results on real-world datasets and face recognition applications show that the proposed SN-SVM model improves the classification accuracy over contemporary classifiers and also provides sparser solution than the KSVM.
机译:本文介绍了一种新颖的稀疏非参数支持向量机分类器(SN-SVM),该分类器结合了两个基于内核的最新分类器的数据分布信息,即内核支持向量机(KSVM)和内核非参数判别式(KND)。所提出的模型结合了KND提供的数据的一些近乎全局的变化,因此可以看作是KSVM的扩展。同样,由于支持向量改善了(kappa)最近邻居((kappa -NN))的选择,因此它也可以作为KND的扩展。所提出的模型能够处理异方差数据和非正态数据,同时避免了样本量小的问题。该模型是具有一个全局最优解的凸二次优化问题,因此可以使用数值方法轻松而高效地进行估计。它也可以简化为经典的KSVM模型,因此可以使用现有的SVM程序轻松实现。通过在高斯先验的帮助下的贝叶斯解释,我们证明了我们的方法通过将非零权重分配给训练样本总数的一小部分来提供稀疏解。现有的稀疏分类算法可以使用这种稀疏性来获得更好的计算效率。在真实数据集和人脸识别应用程序上的实验结果表明,所提出的SN-SVM模型比现代分类器提高了分类精度,并且比KSVM提供了更稀疏的解决方案。

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