has been considerable interest recently in the application of bagging in the classification of both gene-expression data and protein-abundance mass spectrometry data. The approach is often justified by the improvement it produces on the performance of unstable, overfitting classification rules under small-sample situations. However, the question of real practical interest is whether the ensemble scheme will improve performance of those classifiers sufficiently to beat the performance of single stable, nonoverfitting classifiers, in the case of small-sample genomic and proteomic data sets. To investigate that question, we conducted a detailed empirical study, using publicly-available data sets from published genomic and proteomic studies. We...
Many different classification models and techniques have been employed on gene expression data. Thes...
We examined whether or not the predictive ability of genomic best linear unbiased prediction (GBLUP)...
We have investigated strategies for enhancing ensemble learning algorithms for DNA microarray data a...
Bagging forms a committee of classifiers by bootstrap aggregation of training sets from a pool of tr...
License, which permits unrestricted use, distribution, and reproduction in any medium, provided the ...
Abstract. Bagging is a simple and robust classification algorithm in the presence of class label noi...
Motivation: Microarray experiments are expected to contribute significantly to the progress in cance...
The small-sample size issue is a prevalent problem in Genomics and Proteomics today. Bootstrap, a re...
Copyright © 2012 Kanthida Kusonmano et al. This is an open access article distributed under the Crea...
Motivation: Microarray experiments are expected to contribute significantly to the progress in cance...
An ensemble consists of a set of individually trained classifiers (such as neural networks or decisi...
Bagging has been found to be successful in increasing the predictive performance of unstable classif...
Ensemble methods, such as the traditional bagging algorithm, can usually improve the performance of ...
An ensemble consists of a set of independently trained classifiers (such as neural networks or decis...
This paper compares empirically four bagging-based ensemble classifiers, namely the ensemble adaptiv...
Many different classification models and techniques have been employed on gene expression data. Thes...
We examined whether or not the predictive ability of genomic best linear unbiased prediction (GBLUP)...
We have investigated strategies for enhancing ensemble learning algorithms for DNA microarray data a...
Bagging forms a committee of classifiers by bootstrap aggregation of training sets from a pool of tr...
License, which permits unrestricted use, distribution, and reproduction in any medium, provided the ...
Abstract. Bagging is a simple and robust classification algorithm in the presence of class label noi...
Motivation: Microarray experiments are expected to contribute significantly to the progress in cance...
The small-sample size issue is a prevalent problem in Genomics and Proteomics today. Bootstrap, a re...
Copyright © 2012 Kanthida Kusonmano et al. This is an open access article distributed under the Crea...
Motivation: Microarray experiments are expected to contribute significantly to the progress in cance...
An ensemble consists of a set of individually trained classifiers (such as neural networks or decisi...
Bagging has been found to be successful in increasing the predictive performance of unstable classif...
Ensemble methods, such as the traditional bagging algorithm, can usually improve the performance of ...
An ensemble consists of a set of independently trained classifiers (such as neural networks or decis...
This paper compares empirically four bagging-based ensemble classifiers, namely the ensemble adaptiv...
Many different classification models and techniques have been employed on gene expression data. Thes...
We examined whether or not the predictive ability of genomic best linear unbiased prediction (GBLUP)...
We have investigated strategies for enhancing ensemble learning algorithms for DNA microarray data a...