Abstract Gene expression data have become increasingly important in machine learning and computational biology over the past few years. In the field of gene expression analysis, several matrix factorization-based dimensionality reduction methods have been developed. However, such methods can still be improved in terms of efficiency and reliability. In this paper, an innovative approach to feature selection, called Dual Regularized Unsupervised Feature Selection Based on Matrix Factorization and Minimum Redundancy (DR-FS-MFMR), is introduced. The major focus of DR-FS-MFMR is to discard redundant features from the set of original features. In order to reach this target, the primary feature selection problem is defined in terms of two aspects:...
Abstract Background Due to the large number of genes in a typical microarray dataset, feature select...
(Aim) Gene expression data is typically high dimensional with a limited number of samples and contai...
This paper addresses feature selection techniques for classification of high dimensional data, such ...
Gene expression data have become increasingly important in machine learning and computational biolog...
AbstractIn this article, an improved feature selection technique has been proposed. Mutual Informati...
Abstract—In this paper we propose a feature similarity based redundancy reduction (FSRR) algorithm f...
The recent development of microarray gene expression techniques have made it possible to offer pheno...
Abstract Background Gene expression data usually contains a large number of genes, but a small numbe...
The analysis of microarray gene expression data to obtain useful information is a challenging proble...
Abstract Gene expression profile data have high-dimensionality with a small number of samples. These...
Recently, feature selection and dimensionality reduction have become fundamental tools for many data...
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 ...
AbstractClassification of gene expression data plays a significant role in prediction and diagnosis ...
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...
(Aim) Gene expression data is typically high dimensional with a limited number of samples and contai...
This paper addresses feature selection techniques for classification of high dimensional data, such ...
Gene expression data have become increasingly important in machine learning and computational biolog...
AbstractIn this article, an improved feature selection technique has been proposed. Mutual Informati...
Abstract—In this paper we propose a feature similarity based redundancy reduction (FSRR) algorithm f...
The recent development of microarray gene expression techniques have made it possible to offer pheno...
Abstract Background Gene expression data usually contains a large number of genes, but a small numbe...
The analysis of microarray gene expression data to obtain useful information is a challenging proble...
Abstract Gene expression profile data have high-dimensionality with a small number of samples. These...
Recently, feature selection and dimensionality reduction have become fundamental tools for many data...
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 ...
AbstractClassification of gene expression data plays a significant role in prediction and diagnosis ...
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...
(Aim) Gene expression data is typically high dimensional with a limited number of samples and contai...
This paper addresses feature selection techniques for classification of high dimensional data, such ...