Background: DNA microarray gene expression classification poses a challenging task to the machine learning domain. Typically, the dimensionality of gene expression data sets could go from several thousands to over 10,000 genes. A potential solution to this issue is using feature selection to reduce the dimensionality. Aim The aim of this paper is to investigate how we can use feature quality information to improve the precision of microarray gene expression classification tasks. Method: We propose two evolutionary machine learning models based on the eXtended Classifier System (XCS) and a typical feature selection methodology. The first one, which we call FS-XCS, uses feature selection for feature reduction purposes. The second model is GRD...
Gene expression data is a very complex data set characterised by abundant numbers of features but wi...
Background: High dimensional feature space generally degrades classification in several applications...
Background: High dimensional feature space generally degrades classification in several applications...
BackgroundDNA microarray gene expression classification poses a challenging task to the machine lear...
As data mining develops and expands to new application areas, feature selection also reveals various...
AbstractThe DNA microarray technology has capability to determine the levels of thousands of gene si...
Feature selection attracts researchers who deal with machine learning and data mining. It consists o...
Traditional gene selection methods often select the top–ranked genes according to their individual ...
This article was originally published in BMC Genomics. doi:10.1186/1471-2164-12-S5-S1Background: Mic...
Abstract Motivation: The microarray report measures the expressions of tens of thousa...
Recently, feature selection and dimensionality reduction have become fundamental tools for many data...
The detection of genetic mutations has attracted global attention. several methods have proposed to ...
peer reviewedMicroarray data analysis has been shown to provide an effective tool for studying cance...
Most of the conventional feature selection algorithms have a drawback whereby a weakly ranked gene t...
Machine Learning methods have of late made signicant efforts to solving multidisciplinary problems i...
Gene expression data is a very complex data set characterised by abundant numbers of features but wi...
Background: High dimensional feature space generally degrades classification in several applications...
Background: High dimensional feature space generally degrades classification in several applications...
BackgroundDNA microarray gene expression classification poses a challenging task to the machine lear...
As data mining develops and expands to new application areas, feature selection also reveals various...
AbstractThe DNA microarray technology has capability to determine the levels of thousands of gene si...
Feature selection attracts researchers who deal with machine learning and data mining. It consists o...
Traditional gene selection methods often select the top–ranked genes according to their individual ...
This article was originally published in BMC Genomics. doi:10.1186/1471-2164-12-S5-S1Background: Mic...
Abstract Motivation: The microarray report measures the expressions of tens of thousa...
Recently, feature selection and dimensionality reduction have become fundamental tools for many data...
The detection of genetic mutations has attracted global attention. several methods have proposed to ...
peer reviewedMicroarray data analysis has been shown to provide an effective tool for studying cance...
Most of the conventional feature selection algorithms have a drawback whereby a weakly ranked gene t...
Machine Learning methods have of late made signicant efforts to solving multidisciplinary problems i...
Gene expression data is a very complex data set characterised by abundant numbers of features but wi...
Background: High dimensional feature space generally degrades classification in several applications...
Background: High dimensional feature space generally degrades classification in several applications...