When the feature selection process aims at discovering useful knowledge from data, not just producing an accurate classifier, the degree of stability of selected features is a very crucial issue. In the last years, the ensemble paradigm has been proposed as a primary avenue for enhancing the stability of feature selection, especially in high-dimensional/small sample size domains, such as biomedicine. However, the potential and the implications of the ensemble approach have been investigated only partially, and the indications provided by recent literature are not exhaustive yet. To give a contribution in this direction, we present an empirical analysis that evaluates the effects of an ensemble strategy in the context of gene selection from ...
Ensemble learning is an intensively studies technique in machine learning and pattern recognition. R...
With the explosive growth of high-dimensional data, feature selection has become a crucial step of m...
Analysis of gene-expression data often requires that a gene (feature) subset is selected and many fe...
When the feature selection process aims at discovering useful knowledge from data, not just producin...
Ensemble feature selection has been recently explored as a promising paradigm to improve the stabili...
Ensemble classification is a well-established approach that involves fusing the decisions of multipl...
AbstractSelecting relevant and discriminative genes for sample classification is a common and critic...
[EN] This paper proposes an ensemble framework for gene selection, which is aimed at addressing inst...
Abstract. Ensemble methods are often used to decide on a good selec-tion of features for later proce...
Gene expression data often need to be classified into classes or grouped into clusters for further a...
Motivation: Biomarker discovery is an important topic in biomedical applications of computational bi...
Motivation: Biomarker discovery is an important topic in biomedical applications of computational bi...
Selecting a subset of relevant features is crucial to the analysis of high-dimensional datasets comi...
Ensemble feature selection has drawn more and more attention in recent years. There are mainly two s...
Robustness or stability of feature selection techniques is a, topic of recent interest, and is an im...
Ensemble learning is an intensively studies technique in machine learning and pattern recognition. R...
With the explosive growth of high-dimensional data, feature selection has become a crucial step of m...
Analysis of gene-expression data often requires that a gene (feature) subset is selected and many fe...
When the feature selection process aims at discovering useful knowledge from data, not just producin...
Ensemble feature selection has been recently explored as a promising paradigm to improve the stabili...
Ensemble classification is a well-established approach that involves fusing the decisions of multipl...
AbstractSelecting relevant and discriminative genes for sample classification is a common and critic...
[EN] This paper proposes an ensemble framework for gene selection, which is aimed at addressing inst...
Abstract. Ensemble methods are often used to decide on a good selec-tion of features for later proce...
Gene expression data often need to be classified into classes or grouped into clusters for further a...
Motivation: Biomarker discovery is an important topic in biomedical applications of computational bi...
Motivation: Biomarker discovery is an important topic in biomedical applications of computational bi...
Selecting a subset of relevant features is crucial to the analysis of high-dimensional datasets comi...
Ensemble feature selection has drawn more and more attention in recent years. There are mainly two s...
Robustness or stability of feature selection techniques is a, topic of recent interest, and is an im...
Ensemble learning is an intensively studies technique in machine learning and pattern recognition. R...
With the explosive growth of high-dimensional data, feature selection has become a crucial step of m...
Analysis of gene-expression data often requires that a gene (feature) subset is selected and many fe...