基于核的Wilcoxon分类器研究

Hsu-Kun Wu, J. Hsieh, Yih-Lon Lin
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引用次数: 1

摘要

非参数Wilcoxon回归器将基于秩的线性参数回归方法推广到非参数神经网络中,旨在提高非线性回归问题对异常值的鲁棒性。研究Wilcoxon方法是否也可以推广到非参数分类问题是很自然的。在支持向量分类器(SVCs)的激励下,我们提出了一种新的分类器,称为基于核的Wilcoxon分类器(KWCs),用于非线性分类问题。KWC与SVC具有相同的函数形式,但具有完全不同的目标函数。将提供基于梯度投影的简单权值更新规则。仿真结果表明,KWCs和SVCs的性能基本一致。
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Study on kernel-based Wilcoxon classifiers
Nonparametric Wilcoxon regressors, which generalize the rank-based Wilcoxon approach for linear parametric regression problems to nonparametric neural networks, were recently developed aiming at improving robustness against outliers in nonlinear regression problems. It is natural to investigate if the Wilcoxon approach can also be generalized to nonparametric classification problems. Motivated by support vector classifiers (SVCs), we propose in this paper a novel family of classifiers, called kernel-based Wilcoxon classifiers (KWCs), for nonlinear classification problems. KWC has the same functional form as that of SVC, but with a totally different objective function. Simple weight updating rules based on gradient projection will be provided. Simulation results show that performances of KWCs and SVCs are about the same.
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