As data mining develops and expands to new application areas, feature selection also reveals various aspects to be considered. This paper underlines two aspects that seem to categorize the large body of available feature selection algorithms: the effectiveness and the representation level. The effectiveness deals with selecting the minimum set of variables that maximize the accuracy of a classifier and the representation level concerns discovering how relevant the variables are for the domain of interest. For balancing the above aspects, the paper proposes an evolutionary framework for feature selection that expresses a hybrid method, organized in layers, each of them exploits a specific model of search strategy. Extensive experiments on ge...
Machine Learning methods have of late made signicant efforts to solving multidisciplinary problems i...
Abstract—Feature selection techniques became a lucid want in many bioinformatics applications. Addit...
Recently, feature selection and dimensionality reduction have become fundamental tools for many data...
As data mining develops and expands to new application areas, feature selection also reveals various...
Developing an accurate classifier for high dimensional microarray datasets is a challenging task due...
As a commonly used technique in data preprocessing for machine learning, feature selection identifie...
Evolutionary algorithms have received much attention in extracting knowledge on high-dimensional mic...
Methods currently used for micro-array data classification aim to select a minimum subset of feature...
230 p.One problem with discriminant analysis of DNA microarray data is that each sample is represent...
One of the most prevalent problems with big data is that many of the features are irrelevant. Gene s...
One of the most prevalent problems with big data is that many of the features are irrelevant. Gene s...
This thesis contains research on feature selection, in particular feature selection using evolutiona...
Feature selection is an important task in data mining and machine learning to reduce the dimensional...
Abstract: Data mining played vital role in comprehending, analyzing, understanding and interpreting ...
The classification of cancers from gene expression profiles is a challenging research area in bioinf...
Machine Learning methods have of late made signicant efforts to solving multidisciplinary problems i...
Abstract—Feature selection techniques became a lucid want in many bioinformatics applications. Addit...
Recently, feature selection and dimensionality reduction have become fundamental tools for many data...
As data mining develops and expands to new application areas, feature selection also reveals various...
Developing an accurate classifier for high dimensional microarray datasets is a challenging task due...
As a commonly used technique in data preprocessing for machine learning, feature selection identifie...
Evolutionary algorithms have received much attention in extracting knowledge on high-dimensional mic...
Methods currently used for micro-array data classification aim to select a minimum subset of feature...
230 p.One problem with discriminant analysis of DNA microarray data is that each sample is represent...
One of the most prevalent problems with big data is that many of the features are irrelevant. Gene s...
One of the most prevalent problems with big data is that many of the features are irrelevant. Gene s...
This thesis contains research on feature selection, in particular feature selection using evolutiona...
Feature selection is an important task in data mining and machine learning to reduce the dimensional...
Abstract: Data mining played vital role in comprehending, analyzing, understanding and interpreting ...
The classification of cancers from gene expression profiles is a challenging research area in bioinf...
Machine Learning methods have of late made signicant efforts to solving multidisciplinary problems i...
Abstract—Feature selection techniques became a lucid want in many bioinformatics applications. Addit...
Recently, feature selection and dimensionality reduction have become fundamental tools for many data...