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Nonparametric discriminant analysis and nearest neighbor classification

机译:非参数判别分析和最近邻分类

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摘要

Nonparametric discriminant analysis (NDA), opposite to other nonparametric techniques, has received little or no attention within the pattern recognition community. Nearest neighbor classification (NN) instead, has a well established position among other classification techniques due to its practical and theoretical properties. In this paper, we observe that when we seek a linear representation adapted to improve NN performance, what we obtain not surprisingly is quite close to NDA. Since a hierarchy is provided on the extracted features it also serves as a dimensionality reduction technique that preserves NN performance. Experiments evaluate and compare NN classification using our proposed representation against more classical feature extraction techniques.
机译:与其他非参数技术相反,非参数判别分析(NDA)在模式识别社区中几乎没有受到关注。相反,由于其实际和理论特性,最近邻居分类(NN)在其他分类技术中拥有公认的位置。在本文中,我们观察到,当我们寻求适合于改善NN性能的线性表示形式时,我们毫不奇怪地获得的结果非常接近NDA。由于在提取的特征上提供了层次结构,因此它还可以作为维数减少技术来保留NN性能。实验使用我们提出的表示法和更经典的特征提取技术评估和比较了NN分类。

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