Ensemble feature selection has drawn more and more attention in recent years. There are mainly two strategies for ensemble feature selection, namely data perturbation and function perturbation. Data perturbation performs feature selection on data subsets sampled from the original dataset and then selects the features consistently ranked highly across those data subsets. Function perturbation frees the user from having to decide on the most appropriate selector for any given situation and works by aggregating multiple selectors. Our study showed that function perturbation resulted in a low stability. We therefore propose a framework, Ensemble Feature Selection Integrating Stability (EFSIS), combining these two strategies and integrating stab...
© 2019. This manuscript version is made available under the CC-BY-NC-ND 4.0 license https://creative...
Analysis of gene-expression data often requires that a gene (feature) subset is selected and many fe...
[EN] This paper proposes an ensemble framework for gene selection, which is aimed at addressing inst...
Ensemble feature selection has drawn more and more attention in recent years. There are mainly two s...
Ensemble classification is a well-established approach that involves fusing the decisions of multipl...
Selecting a subset of relevant features is crucial to the analysis of high-dimensional datasets comi...
Abstract. Ensemble methods are often used to decide on a good selec-tion of features for later proce...
When the feature selection process aims at discovering useful knowledge from data, not just producin...
Robustness or stability of feature selection techniques is a, topic of recent interest, and is an im...
Ensemble feature selection has been recently explored as a promising paradigm to improve the stabili...
Feature selection (FS) has attracted the attention of many researchers in the last few years due to ...
Robustness of feature selection techniques is a topic of recent interest, especially in high dimensi...
With the explosive growth of high-dimensional data, feature selection has become a crucial step of m...
With the proliferation of extremely high-dimensional data, feature selection algorithms have become ...
Data mining involves the use of data analysis tools to discover previously unknown, valid patterns a...
© 2019. This manuscript version is made available under the CC-BY-NC-ND 4.0 license https://creative...
Analysis of gene-expression data often requires that a gene (feature) subset is selected and many fe...
[EN] This paper proposes an ensemble framework for gene selection, which is aimed at addressing inst...
Ensemble feature selection has drawn more and more attention in recent years. There are mainly two s...
Ensemble classification is a well-established approach that involves fusing the decisions of multipl...
Selecting a subset of relevant features is crucial to the analysis of high-dimensional datasets comi...
Abstract. Ensemble methods are often used to decide on a good selec-tion of features for later proce...
When the feature selection process aims at discovering useful knowledge from data, not just producin...
Robustness or stability of feature selection techniques is a, topic of recent interest, and is an im...
Ensemble feature selection has been recently explored as a promising paradigm to improve the stabili...
Feature selection (FS) has attracted the attention of many researchers in the last few years due to ...
Robustness of feature selection techniques is a topic of recent interest, especially in high dimensi...
With the explosive growth of high-dimensional data, feature selection has become a crucial step of m...
With the proliferation of extremely high-dimensional data, feature selection algorithms have become ...
Data mining involves the use of data analysis tools to discover previously unknown, valid patterns a...
© 2019. This manuscript version is made available under the CC-BY-NC-ND 4.0 license https://creative...
Analysis of gene-expression data often requires that a gene (feature) subset is selected and many fe...
[EN] This paper proposes an ensemble framework for gene selection, which is aimed at addressing inst...