Gene expression datasets are usually of high dimensionality and therefore require efficient and effective methods for identifying the relative importance of their attributes. Due to the huge size of the search space of the possible solutions, the attribute subset evaluation feature selection methods tend to be not applicable, so in these scenarios feature ranking methods are used. Most of the feature ranking methods described in the literature are univariate methods, so they do not detect interactions between factors. In this paper we propose two new multivariate feature ranking methods based on pairwise correlation and pairwise consistency, which we have applied in three gene expression classification problems. We statistically prove that ...
A major area of research is biomarker discovery using gene expression data. Such data is huge and of...
BackgroundDNA microarray gene expression classification poses a challenging task to the machine lear...
With the rapid accumulation of gene expression data from various technologies, e.g., microarray, RNA...
Abstract Background Due to the large number of genes in a typical microarray dataset, feature select...
Abstract Gene expression profile data have high-dimensionality with a small number of samples. These...
Abstract. Microarray experiments generate a large amount of data which is used to discover the genet...
Traditional gene selection methods often select the top–ranked genes according to their individual ...
Machine learning techniques, and in particular supervised learning methods, are nowadays widely used...
AbstractClassification of gene expression data plays a significant role in prediction and diagnosis ...
Classification of microarray data plays a significant role in the diagnosis and prediction of cancer...
(Aim) Gene expression data is typically high dimensional with a limited number of samples and contai...
International audienceMicroarray experiments generate a large amount of data which is used to discov...
In feature gene selection, filtering model concerns classification accuracy while ignoring gene redu...
One important issue in constructing a pattern recognition system is feature selection. The goal of f...
We examine feature selection algorithms for handling data sets with many features. We introduce the ...
A major area of research is biomarker discovery using gene expression data. Such data is huge and of...
BackgroundDNA microarray gene expression classification poses a challenging task to the machine lear...
With the rapid accumulation of gene expression data from various technologies, e.g., microarray, RNA...
Abstract Background Due to the large number of genes in a typical microarray dataset, feature select...
Abstract Gene expression profile data have high-dimensionality with a small number of samples. These...
Abstract. Microarray experiments generate a large amount of data which is used to discover the genet...
Traditional gene selection methods often select the top–ranked genes according to their individual ...
Machine learning techniques, and in particular supervised learning methods, are nowadays widely used...
AbstractClassification of gene expression data plays a significant role in prediction and diagnosis ...
Classification of microarray data plays a significant role in the diagnosis and prediction of cancer...
(Aim) Gene expression data is typically high dimensional with a limited number of samples and contai...
International audienceMicroarray experiments generate a large amount of data which is used to discov...
In feature gene selection, filtering model concerns classification accuracy while ignoring gene redu...
One important issue in constructing a pattern recognition system is feature selection. The goal of f...
We examine feature selection algorithms for handling data sets with many features. We introduce the ...
A major area of research is biomarker discovery using gene expression data. Such data is huge and of...
BackgroundDNA microarray gene expression classification poses a challenging task to the machine lear...
With the rapid accumulation of gene expression data from various technologies, e.g., microarray, RNA...