This paper presents a new relevance index based on mutual information that is based on labeled and unlabeled data. The proposed index, which is based in Mutual Information, takes into account the similarity between features and their joint influence on the output variable. Based on this principle, a method to select features is developed to eliminate redundant and irrelevant features when the relevance index value is less then a threshold value. A strategy to set the threshold is also proposed in this work. Experiments show that the new method is capable of capturing important joint relations between input and output variables, which are incorporated into a new feature selection clustering approach
The Relevance Index (RI) is an information theory-based measure that was originally defined to detec...
The problem of feature selection is crucial for many applica- tions and has thus been studied extens...
The objective of the eliminating process is to reduce the size of the input feature set and at the s...
In this work the principle of homogeneity between labels and data clusters is exploited in order to ...
International audienceThis paper describes a three-level framework for semi-supervised feature selec...
As data acquisition has become relatively easy and inexpensive, data sets are becoming extremely lar...
Feature selection aims to gain relevant features for improved classification performance and remove ...
The aim of this paper is to propose a new generalized formulation for feature extraction based on di...
AbstractFeature selection is used in many application areas relevant to expert and intelligent syste...
The elimination process aims to reduce the size of the input feature set and at the same time to ret...
Feature selection is used in many application areas relevant to expert and intelligent systems, such...
The selection of features that are relevant for a prediction or classification problem is an importa...
In this paper, a supervised feature selection approach is presented, which is based on metric applie...
Mutual information (MI) based approaches are a popu-lar feature selection paradigm. Although the sta...
The Relevance Index (RI) is an information theory-based measure that was originally defined to detec...
The Relevance Index (RI) is an information theory-based measure that was originally defined to detec...
The problem of feature selection is crucial for many applica- tions and has thus been studied extens...
The objective of the eliminating process is to reduce the size of the input feature set and at the s...
In this work the principle of homogeneity between labels and data clusters is exploited in order to ...
International audienceThis paper describes a three-level framework for semi-supervised feature selec...
As data acquisition has become relatively easy and inexpensive, data sets are becoming extremely lar...
Feature selection aims to gain relevant features for improved classification performance and remove ...
The aim of this paper is to propose a new generalized formulation for feature extraction based on di...
AbstractFeature selection is used in many application areas relevant to expert and intelligent syste...
The elimination process aims to reduce the size of the input feature set and at the same time to ret...
Feature selection is used in many application areas relevant to expert and intelligent systems, such...
The selection of features that are relevant for a prediction or classification problem is an importa...
In this paper, a supervised feature selection approach is presented, which is based on metric applie...
Mutual information (MI) based approaches are a popu-lar feature selection paradigm. Although the sta...
The Relevance Index (RI) is an information theory-based measure that was originally defined to detec...
The Relevance Index (RI) is an information theory-based measure that was originally defined to detec...
The problem of feature selection is crucial for many applica- tions and has thus been studied extens...
The objective of the eliminating process is to reduce the size of the input feature set and at the s...