DocumentCode :
919871
Title :
Nonparametric Bayes error estimation using unclassified samples
Author :
Fukunaga, Keinosuke ; Kessell, David L.
Volume :
19
Issue :
4
fYear :
1973
fDate :
7/1/1973 12:00:00 AM
Firstpage :
434
Lastpage :
440
Abstract :
A new nonparametric method of estimating the Bayes risk using an unclassified test sample set as well as a classified design sample set is introduced. The classified design set is used to obtain nonparametric estimates of the conditional Bayes risk of classification at each point of the unclassified test set. The average of these risk estimates is the error estimate. For large numbers of design samples the new error estimate has less variance than does an error-count estimate for classified test samples using the optimum Bayes classifier. The first application of the nonparametric method uses k -nearest neighbor ( k -NN) estimates of the posterior probabilities to form the risk estimate. A large-sample analysis is made of this estimate. The expected value of this estimate is shown to be a lower bound on the Bayes error. A simple modification provides unbiased estimates of the k -NN classification error, thus providing an upper bound on the Bayes error. The second application of the method uses Parzen approximation of the density functions to obtain estimates of the risk and subsequently the Bayes error. Results of experiments on simulated data illustrate the small-sample behavior.
Keywords :
Bayes procedures; Nonparametric estimation; Pattern classification; Density functional theory; Error analysis; Neodymium; Pattern recognition; Probability density function; System performance; Testing; Upper bound; Yield estimation;
fLanguage :
English
Journal_Title :
Information Theory, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9448
Type :
jour
DOI :
10.1109/TIT.1973.1055049
Filename :
1055049
Link To Document :
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