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Non-parametric Fisher's discriminant analysis with kernels for data classification

机译:非参数费舍尔判别分析与内核的数据分类

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摘要

Kernel mapping has attracted a great deal of attention from researchers in the field of pattern recognition and statistical machine learning. Kernel-based approaches are the better choice whenever a non-linear classification model is needed. This paper proposes a nonlinear classification approach based on the non-parametric version of Fisher's discriminant analysis. This technique can efficiently find a nonpara-metric kernel representation where linear discriminants perform better. Data classification is achieved by integrating the linear version of the nonparametric Fisher's discriminant analysis with the kernel mapping. Based on the kernel trick, we provide a new formulation for Fisher's criterion, defined solely in terms of the inner dot-product of the original input data. The obtained experimental results have demonstrated the competitiveness of our approach compared to major state of the art approaches.
机译:内核映射已在模式识别和统计机器学习领域引起了研究人员的极大关注。每当需要非线性分类模型时,基于内核的方法都是更好的选择。本文提出了基于Fisher判别分析的非参数版本的非线性分类方法。该技术可以有效地找到线性判别式性能更好的非参数核表示。通过将非参数Fisher判别分析的线性版本与内核映射集成,可以实现数据分类。基于内核技巧,我们为Fisher准则提供了一种新公式,该准则仅根据原始输入数据的内部点积来定义。获得的实验结果证明了我们的方法与主要技术水平相比的竞争力。

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