Title :
Evaluation of classifier performance in descrete pattern recognition problem
Author :
Berikov, Vladimir
Author_Institution :
Novosibirsk State Tech. Univ., Russia
Abstract :
We consider a problem of pattern classifier performance evaluation in case of learning sample of limited size and discrete space of variables. The principle of Bayesian averaging of recognition performance is used for the analysis. With use of this principle, we found the dependencies between sample size, complexity of variables space, and the mean and variance of the true error function. This gives us a possibility to evaluate the confidence bound for the true error. As an application of these results, we consider the problem of classification tree design and evaluation of its performance.
Keywords :
belief networks; error statistics; feature extraction; pattern classification; Bayesian averaging principle; discrete space variables; error estimation; pattern classifier performance evaluation; pattern recognition performance; true error function;
Conference_Titel :
Science and Technology, 2003. Proceedings KORUS 2003. The 7th Korea-Russia International Symposium on
Print_ISBN :
89-7868-617-6