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基于多元对应分析的KNN分类器组合
引用本文:韩宏,杨静宇,胡钟山. 基于多元对应分析的KNN分类器组合[J]. 信息与控制, 1999, 28(5): 350-356
作者姓名:韩宏  杨静宇  胡钟山
作者单位:南京理工大学计算机系,南京,210094
摘    要:本文提出一种基于多元相应分析的KNN分类器组合方法(MCA KNN),并以手写体识别为例,用KNN分类器在同一样本集合得到的不同特征集上进行分类,再通过多元对应分析对这些分类器的结果进行组合,以得到最终的分类结果.实验结果表明,此种分类器组合方法能显著减少分类错误率.

关 键 词:K近邻分类器(KNN)  多元对应分析  字符识别

COMBINATION OF KNN CLASSIFIERS BASED ON MULTIPLE CORRESPONDENCE ANALYSIS
HAN Hong,YANG Jing-yu,HU Zhong-shan. COMBINATION OF KNN CLASSIFIERS BASED ON MULTIPLE CORRESPONDENCE ANALYSIS[J]. Information and Control, 1999, 28(5): 350-356
Authors:HAN Hong  YANG Jing-yu  HU Zhong-shan
Abstract:This paper presents a KNN classifier combination method based on multiple correspondence analysis (MCA KNN). This combination method is applied to written character recognition. Four kinds of features are extracted from same sample set and four result sets are obtained from these feature sets through KNN classifier. Through MCA KNN, the four result sets are combined to get the final result. The experimental results in this paper demonstrate MCA KNN's capability to reduce classifying error rate.
Keywords:KNN Classifier   Multiple Correspondence Analysis   Character Recognition
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