Abstract: One of the hot topics discussed recently in relation to pattern recognition techniques is the question of ac-tual performance of modern feature selection methods. Feature selection has been a highly active area of research in recent years due to its potential to improve both the performance and economy of automatic deci-sion systems in various applicational fields, with medical diagnosis being among the most prominent. Feature selection may also improve the performance of classifiers learned from limited data, or contribute to model interpretability. The number of available methods and methodologies has grown rapidly while promising important improvements. Yet recently many authors put this development in question, claiming that s...
The curse of dimensionality is a common challenge in machine learning, and feature selection techniq...
Classification of data crosses different domains has been extensively researched and is one of the b...
AbstractFeature selection, as a dimensionality reduction technique, aims to choosing a small subset ...
One of hot topics discussed recently in relation to pattern recognition techniques is the question o...
Abstract—One of the hot topics discussed recently in relation to machine learning is the question of...
Abstract: High-throughput biological technologies offer the promise of finding feature sets to serve...
Summarization: Feature selection (FS) is a significant topic for the development of efficient patter...
© 2015 Imperial College Press. Feature selection is an important data preprocessing step in machine ...
summary:Needs of feature selection in medium and large problems increases in many fields including m...
The aim of this paper is to discuss about various feature selection algorithms applied on different ...
In view of the substantial number of existing feature selection algorithms, the need arises to count...
Needs of feature selection in medium and large problems (medium- and large-scale feature selection) ...
Feature selection is an important data preprocessing step in machine learning and data mining, such ...
summary:The paper gives an overview of feature selection techniques in statistical pattern recogniti...
Abstract. Feature selection is a process followed in order to improve the generalization and the per...
The curse of dimensionality is a common challenge in machine learning, and feature selection techniq...
Classification of data crosses different domains has been extensively researched and is one of the b...
AbstractFeature selection, as a dimensionality reduction technique, aims to choosing a small subset ...
One of hot topics discussed recently in relation to pattern recognition techniques is the question o...
Abstract—One of the hot topics discussed recently in relation to machine learning is the question of...
Abstract: High-throughput biological technologies offer the promise of finding feature sets to serve...
Summarization: Feature selection (FS) is a significant topic for the development of efficient patter...
© 2015 Imperial College Press. Feature selection is an important data preprocessing step in machine ...
summary:Needs of feature selection in medium and large problems increases in many fields including m...
The aim of this paper is to discuss about various feature selection algorithms applied on different ...
In view of the substantial number of existing feature selection algorithms, the need arises to count...
Needs of feature selection in medium and large problems (medium- and large-scale feature selection) ...
Feature selection is an important data preprocessing step in machine learning and data mining, such ...
summary:The paper gives an overview of feature selection techniques in statistical pattern recogniti...
Abstract. Feature selection is a process followed in order to improve the generalization and the per...
The curse of dimensionality is a common challenge in machine learning, and feature selection techniq...
Classification of data crosses different domains has been extensively researched and is one of the b...
AbstractFeature selection, as a dimensionality reduction technique, aims to choosing a small subset ...