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A Local Mean-Based k-Nearest Centroid Neighbor Classifier

机译:基于局部均值的k最近质心邻域分类器

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摘要

k-nearest neighbor (KNN) rule is a simple and effective algorithm in pattern classification. In this article, we propose a local mean-based k-nearest centroid neighbor classifier that assigns to each query pattern a class label with nearest local centroid mean vector so as to improve the classification performance. The proposed scheme not only takes into account the proximity and spatial distribution of k neighbors, but also utilizes the local mean vector of k neighbors from each class in making classification decision. In the proposed classifier, a local mean vector of k nearest centroid neighbors from each class for a query pattern is well positioned to sufficiently capture the class distribution information. In order to investigate the classification behavior of the proposed classifier, we conduct extensive experiments on the real and synthetic data sets in terms of the classification error. Experimental results demonstrate that our proposed method performs significantly well, particularly in the small sample size cases, compared with the state-of-the-art KNN-based algorithms.
机译:k近邻(KNN)规则是模式分类中一种简单有效的算法。在本文中,我们提出了一种基于局部均值的k近邻质心邻居分类器,该分类器为每个查询模式分配了具有最接近局部质心均值向量的类标签,以提高分类性能。所提出的方案不仅考虑了k个邻居的邻近度和空间分布,而且还利用每个类别的k个邻居的局部均值矢量进行分类决策。在提出的分类器中,对于查询模式,来自每个类别的k个最接近质心邻域的局部均值向量定位良好,足以捕获类别分布信息。为了调查提出的分类器的分类行为,我们根据分类误差对真实和合成数据集进行了广泛的实验。实验结果表明,与最新的基于KNN的算法相比,我们提出的方法表现出色,尤其是在小样本量的情况下。

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