In view of the substantial number of existing feature selection algorithms, the need arises to count on criteria that enables to adequately decide which algorithm to use in certain situations. This work assesses the performance of several fundamental algorithms found in the literature in a controlled scenario. A scoring measure ranks the algorithms by taking into account the amount of relevance, irrelevance and redundance on sample data sets. This measure computes the degree of matching between the output given by the algorithm and the known optimal solution. Sample size effects are also studied.Peer Reviewe
AbstractFeature selection, as a dimensionality reduction technique, aims to choosing a small subset ...
Feature selection is an important prerequisite of any pattern recognition, machine learning or data ...
The main purpose of Feature Subset Selection is to find a reduced subset of attributes from a data...
In view of the substantial number of existing feature selection algorithms, the need arises to count...
In view of the substantial number of existing feature selection algorithms, the need arises to coun...
In view of the substantial number of existing feature selection algorithms, the need arises to count...
In view of the substantial number of existing feature selection algorithms, the need arises to coun...
Summarization: Feature selection (FS) is a significant topic for the development of efficient patter...
Feature selection (FS) is an important research topic in the area of data mining and machine learnin...
Feature selection (FS) is an important research topic in the area of data mining and machine learnin...
Feature selection (FS) is an important research topic in the area of data mining and machine learnin...
Feature Selection has been a subject of extensive research that nowadays extends far beyond the boun...
1 Introduction The process of feature selection, also known as attribute subset selection is a key f...
The main purpose of Feature Subset Selection is to find a reduced subset of attributes from a data ...
In order to process large amount of data, it is necessary to use computers. It is possible to use st...
AbstractFeature selection, as a dimensionality reduction technique, aims to choosing a small subset ...
Feature selection is an important prerequisite of any pattern recognition, machine learning or data ...
The main purpose of Feature Subset Selection is to find a reduced subset of attributes from a data...
In view of the substantial number of existing feature selection algorithms, the need arises to count...
In view of the substantial number of existing feature selection algorithms, the need arises to coun...
In view of the substantial number of existing feature selection algorithms, the need arises to count...
In view of the substantial number of existing feature selection algorithms, the need arises to coun...
Summarization: Feature selection (FS) is a significant topic for the development of efficient patter...
Feature selection (FS) is an important research topic in the area of data mining and machine learnin...
Feature selection (FS) is an important research topic in the area of data mining and machine learnin...
Feature selection (FS) is an important research topic in the area of data mining and machine learnin...
Feature Selection has been a subject of extensive research that nowadays extends far beyond the boun...
1 Introduction The process of feature selection, also known as attribute subset selection is a key f...
The main purpose of Feature Subset Selection is to find a reduced subset of attributes from a data ...
In order to process large amount of data, it is necessary to use computers. It is possible to use st...
AbstractFeature selection, as a dimensionality reduction technique, aims to choosing a small subset ...
Feature selection is an important prerequisite of any pattern recognition, machine learning or data ...
The main purpose of Feature Subset Selection is to find a reduced subset of attributes from a data...