We propose a novel feature selection method based on quadratic mutual information which has its roots in Cauchy–Schwarz divergence and Renyi entropy. The method uses the direct estimation of quadratic mutual information from data samples using Gaussian kernel functions, and can detect second order non-linear relations. Its main advantages are: (i) unified analysis of discrete and continuous data, excluding any discretization; and (ii) its parameter-free design. The effectiveness of the proposed method is demonstrated through an extensive comparison with mutual information feature selection (MIFS), minimum redundancy maximum relevance (MRMR), and joint mutual information (JMI) on classification and regression problem domains. The experiments...
AbstractFeature selection is used in many application areas relevant to expert and intelligent syste...
Most current mutual information (MI) based feature se-lection techniques are greedy in nature thus a...
The elimination process aims to reduce the size of the input feature set and at the same time to ret...
We propose a novel feature selection method based on quadratic mutual information which has its root...
We propose a novel feature selection method based on quadratic mutual information which has its root...
Abstract—Feature selection problem has become the focus of much pattern classification research and ...
Abstract—A novel feature selection method using the concept of mutual information (MI) is proposed i...
We propose the feature selection method based on the dependency between features in an unsupervised ...
The selection of features that are relevant for a prediction or classification problem is an importa...
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 ...
The filter feature selection algorithm is habitually used as an effective way to reduce the computat...
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...
Most current mutual information (MI) based feature selection techniques are greedy in nature thus ar...
AbstractFeature selection is used in many application areas relevant to expert and intelligent syste...
Most current mutual information (MI) based feature se-lection techniques are greedy in nature thus a...
The elimination process aims to reduce the size of the input feature set and at the same time to ret...
We propose a novel feature selection method based on quadratic mutual information which has its root...
We propose a novel feature selection method based on quadratic mutual information which has its root...
Abstract—Feature selection problem has become the focus of much pattern classification research and ...
Abstract—A novel feature selection method using the concept of mutual information (MI) is proposed i...
We propose the feature selection method based on the dependency between features in an unsupervised ...
The selection of features that are relevant for a prediction or classification problem is an importa...
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 ...
The filter feature selection algorithm is habitually used as an effective way to reduce the computat...
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...
Most current mutual information (MI) based feature selection techniques are greedy in nature thus ar...
AbstractFeature selection is used in many application areas relevant to expert and intelligent syste...
Most current mutual information (MI) based feature se-lection techniques are greedy in nature thus a...
The elimination process aims to reduce the size of the input feature set and at the same time to ret...