Discrete Classification problems abound in pattern recognition and data mining applications. One of the most common discrete rules is the discrete histogram rule. This paper presents exact formulas for the computation of bias, variance, and RMS of the resubstitution and leave-one-out error estimators, for the discrete histogram rule. We also describe an algorithm to compute the exact probability distribution of resubstitution and leave-one-out, as well as ther deviations from the true error rate. Using a parametric Zipf model, we compute the exact performance of resubstitution and leave-one-out, for varying expected true error, number of samples, and classifier complexity (number of bins). We compare this to approximate performance measures...
Error estimation must be used to find the accuracy of a designed classifier, an issue that is critic...
We propose a general method for error estimation that displays low variance and gen-erally low bias ...
In genomic studies, thousands of features are collected on relatively few samples. One of the goals ...
Discrete Classification problems are important in pattern recognition applications. The most often u...
License, which permits unrestricted use, distribution, and reproduction in any medium, provided the ...
The main training objective of the learning object is to introduce some of the most popular estimato...
Several methods (independent subsamples, leave-one-out, cross-validation, and bootstrapping) have be...
Several methods (independent subsamples, leave-one-out, cross-validation, and bootstrapping) have be...
Several methods (independent subsamples, leave-one-out, cross-validation, and bootstrapping) have be...
Several methods (independent subsamples, leave-one-out, cross-validation, and bootstrapping) have be...
Predictive accuracy, as an estimation of a classifier’s future performance, has been studied for at ...
Predictive accuracy, as an estimation of a classifier’s future performance, has been studied for at ...
Producción CientíficaClassification rules that incorporate additional information usually present in...
Predictive accuracy, as an estimation of a classifier’s future performance, has been studied for at ...
Predictive accuracy, as an estimation of a classifier’s future performance, has been studied for at ...
Error estimation must be used to find the accuracy of a designed classifier, an issue that is critic...
We propose a general method for error estimation that displays low variance and gen-erally low bias ...
In genomic studies, thousands of features are collected on relatively few samples. One of the goals ...
Discrete Classification problems are important in pattern recognition applications. The most often u...
License, which permits unrestricted use, distribution, and reproduction in any medium, provided the ...
The main training objective of the learning object is to introduce some of the most popular estimato...
Several methods (independent subsamples, leave-one-out, cross-validation, and bootstrapping) have be...
Several methods (independent subsamples, leave-one-out, cross-validation, and bootstrapping) have be...
Several methods (independent subsamples, leave-one-out, cross-validation, and bootstrapping) have be...
Several methods (independent subsamples, leave-one-out, cross-validation, and bootstrapping) have be...
Predictive accuracy, as an estimation of a classifier’s future performance, has been studied for at ...
Predictive accuracy, as an estimation of a classifier’s future performance, has been studied for at ...
Producción CientíficaClassification rules that incorporate additional information usually present in...
Predictive accuracy, as an estimation of a classifier’s future performance, has been studied for at ...
Predictive accuracy, as an estimation of a classifier’s future performance, has been studied for at ...
Error estimation must be used to find the accuracy of a designed classifier, an issue that is critic...
We propose a general method for error estimation that displays low variance and gen-erally low bias ...
In genomic studies, thousands of features are collected on relatively few samples. One of the goals ...