Mutual information (MI) based approaches are a popular feature selection paradigm. Although the stated goal of Mi-based feature selection is to identify a subset of features that share the highest mutual information with the class variable, most current Mi-based techniques are greedy methods that make use of low dimensional MI quantities. The reason for using low dimensional approximation has been mostly attributed to the difficulty associated with estimating the high dimensional MI from limited samples. In this paper, we argue a different viewpoint that, given a very large amount of data, the high dimensional MI objective is still problematic to be employed as a meaningful optimization criterion, due to its overfitting nature: the MI almos...
The selection of features that are relevant for a prediction or classification problem is an importa...
Abstract. Mutual Information (MI) is a powerful concept from infor-mation theory used in many applic...
Feature selection is an important preprocessing step for many high-dimensional regression problems. ...
Mutual information (MI) based approaches are a popular feature selection paradigm. Although the stat...
Mutual information (MI) based approaches are a popu-lar feature selection paradigm. Although the sta...
The selection of features that are relevant for a prediction or classification problem is an importa...
Machine learning of high-dimensional data faces the curse of dimensionality, a set of phenomena that...
Abstract. The selection of features that are relevant for a prediction or classification problem is ...
Abstract. The selection of features that are relevant for a prediction or classification problem is ...
Feature selection is used in many application areas relevant to expert and intelligent systems, such...
Feature selection is used in many application areas relevant to expert and intelligent systems, such...
AbstractFeature selection is used in many application areas relevant to expert and intelligent syste...
Mutual information (MI) based approaches are a popular paradigm for feature selection. Most previous...
All rights reserved. Mutual information (MI) based approaches are a popular paradigm for feature sel...
it is often necessary to reduce the dimensionality of data before learning. For example, micro-array...
The selection of features that are relevant for a prediction or classification problem is an importa...
Abstract. Mutual Information (MI) is a powerful concept from infor-mation theory used in many applic...
Feature selection is an important preprocessing step for many high-dimensional regression problems. ...
Mutual information (MI) based approaches are a popular feature selection paradigm. Although the stat...
Mutual information (MI) based approaches are a popu-lar feature selection paradigm. Although the sta...
The selection of features that are relevant for a prediction or classification problem is an importa...
Machine learning of high-dimensional data faces the curse of dimensionality, a set of phenomena that...
Abstract. The selection of features that are relevant for a prediction or classification problem is ...
Abstract. The selection of features that are relevant for a prediction or classification problem is ...
Feature selection is used in many application areas relevant to expert and intelligent systems, such...
Feature selection is used in many application areas relevant to expert and intelligent systems, such...
AbstractFeature selection is used in many application areas relevant to expert and intelligent syste...
Mutual information (MI) based approaches are a popular paradigm for feature selection. Most previous...
All rights reserved. Mutual information (MI) based approaches are a popular paradigm for feature sel...
it is often necessary to reduce the dimensionality of data before learning. For example, micro-array...
The selection of features that are relevant for a prediction or classification problem is an importa...
Abstract. Mutual Information (MI) is a powerful concept from infor-mation theory used in many applic...
Feature selection is an important preprocessing step for many high-dimensional regression problems. ...