Most of the conventional feature selection algorithms have a drawback whereby a weakly ranked gene that could perform well in terms of classification accuracy with an appropriate subset of genes will be left out of the selection. Considering this shortcoming, we propose a feature selection algorithm in gene expression data analysis of sample classifications. The proposed algorithm first divides genes into subsets, the sizes of which are relatively small (roughly of size h), then selects informative smaller subsets of genes (of size r < h) from a subset and merges the chosen genes with another gene subset (of size r) to update the gene subset. We repeat this process until all subsets are merged into one informative subset. We illustrate the ...
BackgroundDNA microarray gene expression classification poses a challenging task to the machine lear...
One of the main applications of microarray technology is to determine the gene expression profiles o...
Gene expression data is a very complex data set characterised by abundant numbers of features but wi...
Thousands of genes can be identified by DNA microarray technology at the same time which can have a ...
Gene expression microarray is a rapidly maturing technology that provides the opportunity to assay t...
<div><p>Microarrays have been useful in understanding various biological processes by allowing the s...
AbstractClassification of gene expression data plays a significant role in prediction and diagnosis ...
Microarrays have been useful in understanding various biological processes by allowing the simultane...
Machine Learning methods have of late made signicant efforts to solving multidisciplinary problems i...
Traditional gene selection methods often select the top–ranked genes according to their individual ...
Although there are several causes of cancer, scientists have made a major breakthrough in discoveri...
AbstractThe DNA microarray technology has capability to determine the levels of thousands of gene si...
A general framework for microarray data classification is proposed in this paper. It pro- duces prec...
Recently, feature selection and dimensionality reduction have become fundamental tools for many data...
Background: The measurement of expression levels of many genes through a single experiment is now po...
BackgroundDNA microarray gene expression classification poses a challenging task to the machine lear...
One of the main applications of microarray technology is to determine the gene expression profiles o...
Gene expression data is a very complex data set characterised by abundant numbers of features but wi...
Thousands of genes can be identified by DNA microarray technology at the same time which can have a ...
Gene expression microarray is a rapidly maturing technology that provides the opportunity to assay t...
<div><p>Microarrays have been useful in understanding various biological processes by allowing the s...
AbstractClassification of gene expression data plays a significant role in prediction and diagnosis ...
Microarrays have been useful in understanding various biological processes by allowing the simultane...
Machine Learning methods have of late made signicant efforts to solving multidisciplinary problems i...
Traditional gene selection methods often select the top–ranked genes according to their individual ...
Although there are several causes of cancer, scientists have made a major breakthrough in discoveri...
AbstractThe DNA microarray technology has capability to determine the levels of thousands of gene si...
A general framework for microarray data classification is proposed in this paper. It pro- duces prec...
Recently, feature selection and dimensionality reduction have become fundamental tools for many data...
Background: The measurement of expression levels of many genes through a single experiment is now po...
BackgroundDNA microarray gene expression classification poses a challenging task to the machine lear...
One of the main applications of microarray technology is to determine the gene expression profiles o...
Gene expression data is a very complex data set characterised by abundant numbers of features but wi...