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Center-based nearest neighbor classifier

机译:基于中心的最近邻居分类器

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摘要

In this paper, a novel center-based nearest neighbor (CNN) classifier is proposed to deal with the pattern classification problems. Unlike nearest feature line (NFL) method, CNN considers the line passing through a sample point with known label and the center of the sample class. This line is called the center-based line (CL). These lines seem to have more capacity of representation for sample classes than the original samples and thus can capture more information. Similar to NFL, CNN is based on the nearest distance from an unknown sample point to a certain CL for classification. As a result, the computation time of CNN can be shortened dramatically with less accuracy decrease when compared with NFL. The performance of CNN is demonstrated in one simulation experiment from computational biology and high classification accuracy has been achieved in the leave-one-out test. The comparisons with nearest neighbor (NN) classifier and NFL classifier indicate that this novel classifier achieves competitive performance. (c) 2006 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:本文提出了一种新颖的基于中心的最近邻(CNN)分类器来处理模式分类问题。与最近的要素线(NFL)方法不同,CNN会考虑通过具有已知标签的样本点和样本类别中心的线。该线称为基于中心的线(CL)。这些行似乎比原始样本具有更多的样本类别表示能力,因此可以捕获更多信息。与NFL相似,CNN基于从未知样本点到某个CL的最近距离进行分类。结果,与NFL相比,CNN的计算时间可以显着缩短,而准确性下降的幅度较小。 CNN的性能在一项来自计算生物学的模拟实验中得到了证明,并且在留一法测试中已经实现了高分类精度。与最近邻(NN)分类器和NFL分类器的比较表明,该新型分类器具有竞争优势。 (c)2006模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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