Motivation: Given a large set of potential features, such as the set of all gene-expression values from a microarray, it is necessary to find a small subset with which to classify. The task of finding an optimal feature set of a given size is inherently combinatoric because to assure optimality all feature sets of a givensizemust be checked.Thus, numer-ous suboptimal feature-selection algorithms have been proposed. There are strong impediments to evaluate feature-selection algorithms using real data when data are limited, a common situation in genetic classification. The difficulty is compound. First, there are no class-conditional distributions from which to draw data points, only a single small labeled sample. Second, there are no test da...
In bioinformatics, there are often a large number of input features. For example, there are millions...
In microarray experiments, the goal is often to examine many genes, and select some of them for addi...
One of the most prevalent problems with big data is that many of the features are irrelevant. Gene s...
Motivation: Given a large set of potential features, such as the set of all gene-expression values f...
Motivation: High-throughput technologies for rapid measurement of vast numbers of biological variabl...
Motivation: Pre-selection of informative features for supervised classification is a crucial, albeit...
Motivation: Feature selection approaches have been widely applied to deal with the small sample size...
With the rapid development of computer and information technology, an enormous amount of data in sci...
We examine feature selection algorithms for handling data sets with many features. We introduce the ...
As a commonly used technique in data preprocessing for machine learning, feature selection identifie...
Characteristic selection approaches were widely implemented to deal with the small pattern length ha...
Abstract: Data mining played vital role in comprehending, analyzing, understanding and interpreting ...
As data mining develops and expands to new application areas, feature selection also reveals various...
Thousands of genes can be identified by DNA microarray technology at the same time which can have a ...
Thousands of genes can be identified by DNA microarray technology at the same time which can have a ...
In bioinformatics, there are often a large number of input features. For example, there are millions...
In microarray experiments, the goal is often to examine many genes, and select some of them for addi...
One of the most prevalent problems with big data is that many of the features are irrelevant. Gene s...
Motivation: Given a large set of potential features, such as the set of all gene-expression values f...
Motivation: High-throughput technologies for rapid measurement of vast numbers of biological variabl...
Motivation: Pre-selection of informative features for supervised classification is a crucial, albeit...
Motivation: Feature selection approaches have been widely applied to deal with the small sample size...
With the rapid development of computer and information technology, an enormous amount of data in sci...
We examine feature selection algorithms for handling data sets with many features. We introduce the ...
As a commonly used technique in data preprocessing for machine learning, feature selection identifie...
Characteristic selection approaches were widely implemented to deal with the small pattern length ha...
Abstract: Data mining played vital role in comprehending, analyzing, understanding and interpreting ...
As data mining develops and expands to new application areas, feature selection also reveals various...
Thousands of genes can be identified by DNA microarray technology at the same time which can have a ...
Thousands of genes can be identified by DNA microarray technology at the same time which can have a ...
In bioinformatics, there are often a large number of input features. For example, there are millions...
In microarray experiments, the goal is often to examine many genes, and select some of them for addi...
One of the most prevalent problems with big data is that many of the features are irrelevant. Gene s...