Background We consider both univariate- and multivariate-based feature selection for the problem of binary classification with microarray data. The idea is to determine whether the more sophisticated multivariate approach leads to better misclassification error rates because of the potential to consider jointly significant subsets of genes (but without overfitting the data). Methods We present an empirical study in which 10-fold cross-validation is applied externally to both a univariate-based and two multivariate- (genetic algorithm (GA)-) based feature selection processes. These procedures are applied with respect to three supervised learning algorithms and six published two-class microarray datasets. Results Considering all datasets, and...
In microarray data, gene selection can make data analysis efficient and biological interpretations o...
Gene expression data from microarrays have been suc-cessfully applied to class prediction, where the...
High dimensionality and small sample sizes, and their inherent risk of overfitting, pose great chall...
Motivation. Binary classification is a common problem in many types of research including clinical a...
Microarray technology has provided the means to monitor the expression levels of a large number of g...
Microarray analysis has made it possible to predict clinical outcomes or diagnosing patients with th...
Microarray technology has provided the means to monitor the expression levels of a large number of g...
Motivation: Given a large set of potential features, such as the set of all gene-expression values f...
Background: Machine learning is a powerful approach for describing and predicting classes in microar...
Abstract—Feature selection techniques became a lucid want in many bioinformatics applications. Addit...
In microarray experiments, the goal is often to examine many genes, and select some of them for addi...
Developing an accurate classifier for high dimensional microarray datasets is a challenging task due...
Abstract: Data mining played vital role in comprehending, analyzing, understanding and interpreting ...
We present an experimental setup for analysis and prediction on microarray data, specifically design...
Microarray technology allows for the monitoring of thousands of gene expressions in various biologic...
In microarray data, gene selection can make data analysis efficient and biological interpretations o...
Gene expression data from microarrays have been suc-cessfully applied to class prediction, where the...
High dimensionality and small sample sizes, and their inherent risk of overfitting, pose great chall...
Motivation. Binary classification is a common problem in many types of research including clinical a...
Microarray technology has provided the means to monitor the expression levels of a large number of g...
Microarray analysis has made it possible to predict clinical outcomes or diagnosing patients with th...
Microarray technology has provided the means to monitor the expression levels of a large number of g...
Motivation: Given a large set of potential features, such as the set of all gene-expression values f...
Background: Machine learning is a powerful approach for describing and predicting classes in microar...
Abstract—Feature selection techniques became a lucid want in many bioinformatics applications. Addit...
In microarray experiments, the goal is often to examine many genes, and select some of them for addi...
Developing an accurate classifier for high dimensional microarray datasets is a challenging task due...
Abstract: Data mining played vital role in comprehending, analyzing, understanding and interpreting ...
We present an experimental setup for analysis and prediction on microarray data, specifically design...
Microarray technology allows for the monitoring of thousands of gene expressions in various biologic...
In microarray data, gene selection can make data analysis efficient and biological interpretations o...
Gene expression data from microarrays have been suc-cessfully applied to class prediction, where the...
High dimensionality and small sample sizes, and their inherent risk of overfitting, pose great chall...