In this paper, we consider an Integer Programming (IP) model for a particular class of Feature Selection (FS) problems. FS arises in Data Analysis and Data Mining to properly reduce the dimension of the space where the data are represented. Such dimensional reduction is performed to make the analysis tractable while retaining the largest amount of information. We describe such model exploiting some o its mathematical properties, show that an exact solution approach is out of the question for realistically large size data sets and analyze the performances of an ad-hoc developed randomized heuristics. Such method has already been applied successfully to solve real instances arising in computational biology; the experimental work proposed here...
Abstract—Feature selection techniques became a lucid want in many bioinformatics applications. Addit...
This article studies the impact of feature selection methods on the results of bioinformatics data c...
The problem of discriminating between two finite point sets in n-dimensional feature space by a sepa...
In this paper, we consider an Integer Programming (IP) model for a particular class of Feature Selec...
Feature Selection (FS) arises in data analysis to reduce the dimension of large data. We focus on in...
Feature selection methods are used in machine learning and data analysis to select a subset of featu...
Feature selection methods are used in machine learning and data analysis to select a subset of featu...
In data analysis it is of crucial importance the selection of a compact subset of the available feat...
In bioinformatics, there are often a large number of input features. For example, there are millions...
One of the major challenges in automatic classification is to deal with highly dimensional data. Sev...
Feature selection techniques have become an apparent need in many bioinformatics applications. In ad...
Research Doctorate - Doctor of Philosophy (PhD)Intuitively, the Feature Selection problem is to choo...
Abstract Background Feature selection is a pattern recognition approach to choose important variable...
Feature selection techniques have become an apparent need in many bioinformatics applications. In ad...
We examine feature selection algorithms for handling data sets with many features. We introduce the ...
Abstract—Feature selection techniques became a lucid want in many bioinformatics applications. Addit...
This article studies the impact of feature selection methods on the results of bioinformatics data c...
The problem of discriminating between two finite point sets in n-dimensional feature space by a sepa...
In this paper, we consider an Integer Programming (IP) model for a particular class of Feature Selec...
Feature Selection (FS) arises in data analysis to reduce the dimension of large data. We focus on in...
Feature selection methods are used in machine learning and data analysis to select a subset of featu...
Feature selection methods are used in machine learning and data analysis to select a subset of featu...
In data analysis it is of crucial importance the selection of a compact subset of the available feat...
In bioinformatics, there are often a large number of input features. For example, there are millions...
One of the major challenges in automatic classification is to deal with highly dimensional data. Sev...
Feature selection techniques have become an apparent need in many bioinformatics applications. In ad...
Research Doctorate - Doctor of Philosophy (PhD)Intuitively, the Feature Selection problem is to choo...
Abstract Background Feature selection is a pattern recognition approach to choose important variable...
Feature selection techniques have become an apparent need in many bioinformatics applications. In ad...
We examine feature selection algorithms for handling data sets with many features. We introduce the ...
Abstract—Feature selection techniques became a lucid want in many bioinformatics applications. Addit...
This article studies the impact of feature selection methods on the results of bioinformatics data c...
The problem of discriminating between two finite point sets in n-dimensional feature space by a sepa...