Abstract Background Due to the large number of genes in a typical microarray dataset, feature selection looks set to play an important role in reducing noise and computational cost in gene expression-based tissue classification while improving accuracy at the same time. Surprisingly, this does not appear to be the case for all multiclass microarray datasets. The reason is that many feature selection techniques applied on microarray datasets are either rank-based and hence do not take into account correlations between genes, or are wrapper-based, which require high computational cost, and often yield difficult-to-reproduce results. In studies where correlations between genes are considered, attempts to establish the merit of the proposed tec...
In microarray experiments, the goal is often to examine many genes, and select some of them for addi...
Background: This paper presents a unified framework for finding differentially expressed genes (DEGs...
In this paper we derive a method for evaluating and improving techniques for selecting informative g...
Gene microarray classification problems are considered a challenge task since the datasets contain f...
AbstractIn this article, an improved feature selection technique has been proposed. Mutual Informati...
Abstract Background Microarray technology is commonly used as a simple screening tool with a focus o...
In this paper, we propose novel algorithmic models based on fusion of independent and correlated gen...
A plenitude of feature selection (FS) methods is available in the literature, most of them rising as...
Gene expression datasets are usually of high dimensionality and therefore require efficient and effe...
Because of the high dimensionality of the microarray data sets, feature selection (FS) has become an...
The aim of the thesis is to develop a filter-based feature selection (FS) technique for multi class ...
In gene expression microarray data analysis, selecting a small number of discriminative genes from t...
Microarray analysis has made it possible to predict clinical outcomes or diagnosing patients with th...
Abstract: Data mining played vital role in comprehending, analyzing, understanding and interpreting ...
Recently, feature selection and dimensionality reduction have become fundamental tools for many data...
In microarray experiments, the goal is often to examine many genes, and select some of them for addi...
Background: This paper presents a unified framework for finding differentially expressed genes (DEGs...
In this paper we derive a method for evaluating and improving techniques for selecting informative g...
Gene microarray classification problems are considered a challenge task since the datasets contain f...
AbstractIn this article, an improved feature selection technique has been proposed. Mutual Informati...
Abstract Background Microarray technology is commonly used as a simple screening tool with a focus o...
In this paper, we propose novel algorithmic models based on fusion of independent and correlated gen...
A plenitude of feature selection (FS) methods is available in the literature, most of them rising as...
Gene expression datasets are usually of high dimensionality and therefore require efficient and effe...
Because of the high dimensionality of the microarray data sets, feature selection (FS) has become an...
The aim of the thesis is to develop a filter-based feature selection (FS) technique for multi class ...
In gene expression microarray data analysis, selecting a small number of discriminative genes from t...
Microarray analysis has made it possible to predict clinical outcomes or diagnosing patients with th...
Abstract: Data mining played vital role in comprehending, analyzing, understanding and interpreting ...
Recently, feature selection and dimensionality reduction have become fundamental tools for many data...
In microarray experiments, the goal is often to examine many genes, and select some of them for addi...
Background: This paper presents a unified framework for finding differentially expressed genes (DEGs...
In this paper we derive a method for evaluating and improving techniques for selecting informative g...