Feature selection and sample clustering play an important role in bioinformatics. Traditional feature selection methods separate sparse regression and embedding learning. Later, to effectively identify the significant features of the genomic data, Joint Embedding Learning and Sparse Regression (JELSR) is proposed. However, since there are many redundancy and noise values in genomic data, the sparseness of this method is far from enough. In this paper, we propose a strengthened version of JELSR by adding the L1-norm constraint on the regularization term based on a previous model, and call it LJELSR, to further improve the sparseness of the method. Then, we provide a new iterative algorithm to obtain the convergence solution. The experimental...
The analysis of microarray gene expression data to obtain useful information is a challenging proble...
This paper addresses feature selection techniques for classification of high dimensional data, such ...
This work studies the theoretical rules of feature selection in linear discriminant analysis (LDA), ...
Feature selection has aroused considerable research interests during the last few decades. Tradition...
Abstract—Feature selection has aroused considerable research interests during the last few decades. ...
Feature selection is an important component of many machine learning applica-tions. Especially in ma...
Identifying genes linked to the appearance of certain types of cancers and their phenotypes is a wel...
With the advent of high-throughput biological data in the past twenty years there has been significa...
Abstract Background Finding significant genes or proteins from gene chip data for disease diagnosis ...
This work presents a novel feature selection method for classication of high dimensional data, such ...
In many technological or industrial fields, the amount of high dimensional data is steadily growing....
With the rise of high throughput technologies in biomedical research, large volumes of expression pr...
With the rise of high throughput technologies in biomedical research, large volumes of expression pr...
Over recent years, data-intensive science has been playing an increasingly essential role in biologi...
Tumor samples clustering based on subspace segmentation is an effective method to discover cancer su...
The analysis of microarray gene expression data to obtain useful information is a challenging proble...
This paper addresses feature selection techniques for classification of high dimensional data, such ...
This work studies the theoretical rules of feature selection in linear discriminant analysis (LDA), ...
Feature selection has aroused considerable research interests during the last few decades. Tradition...
Abstract—Feature selection has aroused considerable research interests during the last few decades. ...
Feature selection is an important component of many machine learning applica-tions. Especially in ma...
Identifying genes linked to the appearance of certain types of cancers and their phenotypes is a wel...
With the advent of high-throughput biological data in the past twenty years there has been significa...
Abstract Background Finding significant genes or proteins from gene chip data for disease diagnosis ...
This work presents a novel feature selection method for classication of high dimensional data, such ...
In many technological or industrial fields, the amount of high dimensional data is steadily growing....
With the rise of high throughput technologies in biomedical research, large volumes of expression pr...
With the rise of high throughput technologies in biomedical research, large volumes of expression pr...
Over recent years, data-intensive science has been playing an increasingly essential role in biologi...
Tumor samples clustering based on subspace segmentation is an effective method to discover cancer su...
The analysis of microarray gene expression data to obtain useful information is a challenging proble...
This paper addresses feature selection techniques for classification of high dimensional data, such ...
This work studies the theoretical rules of feature selection in linear discriminant analysis (LDA), ...