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A pseudo nearest centroid neighbour classifier

机译:伪最近质心邻居分类器

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摘要

In this paper, we propose a new reliable classification approach, called the pseudo nearest centroid neighbour rule, which is based on the pseudo nearest neighbour rule (PNN) and nearest centroid neighbourhood (NCN). In the proposed PNCN, the nearest centroid neighbours rather than nearest neighbours per class are first searched by means of NCN. Then, we calculate k categorical local mean vectors corresponding to k nearest centroid neighbours, and assign a weight to each local mean vector. Using the weighted k local mean vectors for each class, PNCN designs the corresponding pseudo nearest centroid neighbour and decides the class label of the query pattern according to the closest pseudo nearest centroid neighbour among all classes. The classification performance of the proposed PNCN is evaluated on real and artificial datasets in terms of the classification accuracy. The experimental results demonstrate the effectiveness and robustness of PNCN over the competing methods in many practical classification problems.
机译:在本文中,我们提出了一种新的可靠分类方法,称为伪最近质心邻居规则,该规则基于伪最近邻(PNN)和最近的质心邻域(NCN)。在所提出的PNCN中,首先通过NCN搜索最近的质心邻居而不是每个类的最近邻居。然后,我们计算对应于k最近质心邻居的K分类局部均值向量,并为每个局部均值矢量分配权重。使用对每个类的加权K局部均值向量,PNCN设计相应的伪最近质心邻居,并根据所有类中最近的伪最近的质心邻居确定查询模式的类标签。在分类准确率方面,在实际和人工数据集中评估所提出的PNCN的分类性能。实验结果表明,在许多实际分类问题中,PNCN对竞争方法的有效性和鲁棒性。

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