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基于指纹识别特征选择的改进加权KNN算法
引用本文:周奇.基于指纹识别特征选择的改进加权KNN算法[J].现代计算机,2014(1):27-29.
作者姓名:周奇
作者单位:广东广播电视大学,广东理工,广州510091
基金项目:广州市高等学校第五批教育教项目(No.JG201337)、广东省高职教育教学管理委员会项目(No.JGW2013070)
摘    要:KNN是最著名的模式识别统计学方法之一。它是一种无参数分类方法,由于其分类的简单有效性,因此得到较为广泛的应用。但是对KNN分类系统的全面评价还有待进一步研究。提出的改进加权KNN算法相比之下具有更高和更加稳定的识别率。因为它在经典KNN算法基础上增加加权距离和类间相似度信息,比经典KNN这种单纯依靠投票的分类方法更加可靠,在分类识别研究中更具有研究和应用价值。

关 键 词:KNN  改时加权  加权距离  类间相似度

Improved Weighted KNN Algorithm Based on Fingerprint Recognition Feature Selection
ZHOU Qi.Improved Weighted KNN Algorithm Based on Fingerprint Recognition Feature Selection[J].Modem Computer,2014(1):27-29.
Authors:ZHOU Qi
Affiliation:ZHOU Qi (Guangdong Radio & TV University, Guangdong Polytechnic Institute, Guangzhou 510091 )
Abstract:KNN is one of the most famous statistical methods of pattern recognition. It is a non-parametric classification method, due to the simple effectiveness of its classification, so it has been more widely used. Further research needs to be a comprehensive evaluation of the KNN classification system. Proposes an improved weighted KNN algorithm, which has a higher and more stable compared to the recognition rate. Because it increases the degree of similarity between the weighted distance and class information in the classic KNN algorithm, based on the classic KNN than relying solely on the classification of this vote is more reliable, more research and application in classification study.
Keywords:KNN (K-Nearest Neighborhood)  Changed Weighted  Weighted Distance  Similarity Between Classes
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