This paper addresses feature selection techniques for classification of high dimensional data, such as those produced by microarray experiments. Some prior knowledge may be available in this context to bias the selection towards some dimensions (genes) a priori assumed to be more relevant. We propose a feature selection method making use of this partial supervision. It extends previous works on embedded feature selection with linear models including regularization to enforce sparsity. A practical approximation of this technique reduces to standard SVM learning with iterative rescaling of the inputs. The scaling factors depend here on the prior knowledge but the final selection may depart from it. Practical results on several microarray data...
Abstract—High dimensional data challenges current feature selection methods. For many real world pro...
Over recent years, data-intensive science has been playing an increasingly essential role in biologi...
Nowadays, the advanced technologies make amounts of data growing in a fast paced way. In many applic...
This paper presents a novel feature selection method for classification of high dimensional data, su...
This work presents a novel feature selection method for classication of high dimensional data, such ...
Recently, feature selection and dimensionality reduction have become fundamental tools for many data...
Microarray dataset dimensionality reduction is a prerequisite for avoiding overfitting, and hence de...
In many technological or industrial fields, the amount of high dimensional data is steadily growing....
New feature selection algorithms for linear threshold functions are described which combine backward...
New feature selection algorithms for linear threshold functions are described which combine backward...
One important issue in constructing a pattern recognition system is feature selection. The goal of f...
OBJECTIVES: We discuss supervised classification techniques applied to medical diagnosis based on ge...
The selection of feature genes with high recognition ability from the gene expression profiles has g...
The analysis of microarray gene expression data to obtain useful information is a challenging proble...
Abstract—Feature selection techniques became a lucid want in many bioinformatics applications. Addit...
Abstract—High dimensional data challenges current feature selection methods. For many real world pro...
Over recent years, data-intensive science has been playing an increasingly essential role in biologi...
Nowadays, the advanced technologies make amounts of data growing in a fast paced way. In many applic...
This paper presents a novel feature selection method for classification of high dimensional data, su...
This work presents a novel feature selection method for classication of high dimensional data, such ...
Recently, feature selection and dimensionality reduction have become fundamental tools for many data...
Microarray dataset dimensionality reduction is a prerequisite for avoiding overfitting, and hence de...
In many technological or industrial fields, the amount of high dimensional data is steadily growing....
New feature selection algorithms for linear threshold functions are described which combine backward...
New feature selection algorithms for linear threshold functions are described which combine backward...
One important issue in constructing a pattern recognition system is feature selection. The goal of f...
OBJECTIVES: We discuss supervised classification techniques applied to medical diagnosis based on ge...
The selection of feature genes with high recognition ability from the gene expression profiles has g...
The analysis of microarray gene expression data to obtain useful information is a challenging proble...
Abstract—Feature selection techniques became a lucid want in many bioinformatics applications. Addit...
Abstract—High dimensional data challenges current feature selection methods. For many real world pro...
Over recent years, data-intensive science has been playing an increasingly essential role in biologi...
Nowadays, the advanced technologies make amounts of data growing in a fast paced way. In many applic...