In this paper, block diagonal linear discriminant analysis (BDLDA) is improved and applied to gene expression data. BDLDA is a classification tool with embedded feature selection, that has demonstrated good performance on simulated data. However, by using cross validation in training, BDLDA is time consuming, thus not an appropriate algorithm for gene expression data, which has a large number of features and relatively small number of samples. In our algorithm, estimated error rate is used as a measure to choose the best model. The algorithm is optimized by repeating the model construction procedure with previously selected features removed, which leads to increased classification robustness. Our algorithm is tested using 10 fold cross vali...
The selection of feature genes with high recognition ability from the gene expression profiles has g...
International audienceIn supervised classification of Microarray data, gene selection aims at identi...
High-dimensional data such as microarrays have brought us new statistical challenges. For example, u...
Model selection and feature selection are usually considered two separate tasks. For example, in a L...
Linear discriminant analysis (LDA) is one of the most popular methods of classification. For high-di...
Abstract Background More studies based on gene expression data have been reported in great detail, h...
A novel method for micro-array data classification based on orthogonal linear discriminant analysis ...
Microarray datasets enables the analysis of expression of thousands of genes across hundreds of samp...
Investigation of genes, using data analysis and computer-based methods, has gained widespread attent...
The direct linear discriminant analysis (DLDA) technique is a well known technique for dimensionalit...
Gene microarray classification problems are considered a challenge task since the datasets contain f...
Abstract: Data mining played vital role in comprehending, analyzing, understanding and interpreting ...
New feature selection algorithms for linear threshold functions are described which combine backward...
The analysis of microarray gene expression data to obtain useful information is a challenging proble...
Microarray is a well-established technology to analyze the expression of many genes in a single reac...
The selection of feature genes with high recognition ability from the gene expression profiles has g...
International audienceIn supervised classification of Microarray data, gene selection aims at identi...
High-dimensional data such as microarrays have brought us new statistical challenges. For example, u...
Model selection and feature selection are usually considered two separate tasks. For example, in a L...
Linear discriminant analysis (LDA) is one of the most popular methods of classification. For high-di...
Abstract Background More studies based on gene expression data have been reported in great detail, h...
A novel method for micro-array data classification based on orthogonal linear discriminant analysis ...
Microarray datasets enables the analysis of expression of thousands of genes across hundreds of samp...
Investigation of genes, using data analysis and computer-based methods, has gained widespread attent...
The direct linear discriminant analysis (DLDA) technique is a well known technique for dimensionalit...
Gene microarray classification problems are considered a challenge task since the datasets contain f...
Abstract: Data mining played vital role in comprehending, analyzing, understanding and interpreting ...
New feature selection algorithms for linear threshold functions are described which combine backward...
The analysis of microarray gene expression data to obtain useful information is a challenging proble...
Microarray is a well-established technology to analyze the expression of many genes in a single reac...
The selection of feature genes with high recognition ability from the gene expression profiles has g...
International audienceIn supervised classification of Microarray data, gene selection aims at identi...
High-dimensional data such as microarrays have brought us new statistical challenges. For example, u...