DocumentCode :
1113948
Title :
Finding Prototypes For Nearest Neighbor Classifiers
Author :
Chang, Chin-Liang
Author_Institution :
IBM Research Laboratory
Issue :
11
fYear :
1974
Firstpage :
1179
Lastpage :
1184
Abstract :
A nearest neighbor classifier is one which assigns a pattern to the class of the nearest prototype. An algorithm is given to find prototypes for a nearest neighbor classifier. The idea is to start with every sample in a training set as a prototype, and then successively merge any two nearest prototypes of the same class so long as the recognition rate is not downgraded. The algorithm is very effective. For example, when it was applied to a training set of 514 cases of liver disease, only 34 prototypes were found necessary to achieve the same recognition rate as the one using the 514 samples of the training set as prototypes. Furthermore, the number of prototypes in the algorithm need not be specified beforehand.
Keywords :
Discriminant functions, generation of prototypes, minimal spanning tree algorithm, nearest neighbor classifiers, pattern recognition, piecewise linear classifiers, recognition rates, test sets, training sets.; Classification tree analysis; Laboratories; Liver diseases; Nearest neighbor searches; Pattern recognition; Piecewise linear techniques; Prototypes; Space technology; Test pattern generators; Testing; Discriminant functions, generation of prototypes, minimal spanning tree algorithm, nearest neighbor classifiers, pattern recognition, piecewise linear classifiers, recognition rates, test sets, training sets.;
fLanguage :
English
Journal_Title :
Computers, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9340
Type :
jour
DOI :
10.1109/T-C.1974.223827
Filename :
1672420
Link To Document :
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