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A Classifier Based on Distance between Test Samples and Average Patterns of Categorical Nearest Neighbors

机译:基于测试样本与分类最近邻居平均模式之间距离的分类器

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摘要

The recognition rate of the typical nonparametric method "k-Nearest Neighbor rule (kNN)" is degraded when the dimensionality of feature vectors is large. Another nonparametric method "linear subspace methods" cannot represent the local distribution of patterns, so recognition rates decrease when pattern distribution is not normal distribution. This paper presents a classifier that outputs the class of a test sample by measuring the distance between the test sample and the average patterns, which are calculated using nearest neighbors belonging to individual categories. A kernel method can be applied to this classifier for improving its recognition rates. The performance of those methods is verified by experiments with handwritten digit patterns and two class artificial ones.
机译:当特征向量的维数较大时,典型的非参数方法“ k最近邻规则(kNN)”的识别率会降低。另一种非参数方法“线性子空间方法”不能表示图案的局部分布,因此当图案分布不是正态分布时,识别率会降低。本文提出了一种分类器,该分类器通过测量测试样本与平均模式之间的距离来输出测试样本的类别,这些平均模式是使用属于各个类别的最近邻居计算得出的。可以将核方法应用于该分类器以提高其识别率。通过手写数字模式和两类人工模式的实验验证了这些方法的性能。

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