An algorithm is proposed for calculating correlation measures based on entropy. The proposed algorithm allows exhaustive exploration of variable subsets on real data. Its time efficiency is demonstrated by comparison against three other variable selection methods based on entropy using 8 data sets from various domains as well as simulated data. The method is applicable to discrete data with a limited number of values making it suitable for medical diagnostic support, DNA sequence analysis, psychometry and other domains
Entropies and entropy-like quantities play an increasing role in modern non-linear data analysis. Fi...
Finding relations among gene expressions involves the definition of the similarity between experimen...
This paper describes the method which allows an estimation of information entropy in the meaning of ...
An algorithm is proposed for calculating correlation measures based on entropy. The proposed algorit...
This paper approaches the algorithm of selection of variables named MIFS-U and presents an alternati...
Measures of relevance between features play an important role in classification and regression analy...
ABSTRACT. This paper approaches the algorithm of selection of variables named MIFS-U and presents an...
We examine the task of feature selection, which is a method of forming simplified descriptions of co...
We use the concept of conditional mutual information (MI) to approach problems involving the selecti...
We propose a new estimator to measure directed dependencies in time series. The dimensionality of da...
Nonlinear techniques have found an increasing interest in the dynamical analysis of various kinds of...
Variable selection methods play an important role in the field of attribute mining. The Naive Bayes ...
We present a framework for quantifying the dynamics of information in coupled physiological systems ...
Feature selection is a critical step in many artificial intelligence and pattern recognition problem...
Sample Entropy is the most popular definition of entropy and is widely used as a measure of the regu...
Entropies and entropy-like quantities play an increasing role in modern non-linear data analysis. Fi...
Finding relations among gene expressions involves the definition of the similarity between experimen...
This paper describes the method which allows an estimation of information entropy in the meaning of ...
An algorithm is proposed for calculating correlation measures based on entropy. The proposed algorit...
This paper approaches the algorithm of selection of variables named MIFS-U and presents an alternati...
Measures of relevance between features play an important role in classification and regression analy...
ABSTRACT. This paper approaches the algorithm of selection of variables named MIFS-U and presents an...
We examine the task of feature selection, which is a method of forming simplified descriptions of co...
We use the concept of conditional mutual information (MI) to approach problems involving the selecti...
We propose a new estimator to measure directed dependencies in time series. The dimensionality of da...
Nonlinear techniques have found an increasing interest in the dynamical analysis of various kinds of...
Variable selection methods play an important role in the field of attribute mining. The Naive Bayes ...
We present a framework for quantifying the dynamics of information in coupled physiological systems ...
Feature selection is a critical step in many artificial intelligence and pattern recognition problem...
Sample Entropy is the most popular definition of entropy and is widely used as a measure of the regu...
Entropies and entropy-like quantities play an increasing role in modern non-linear data analysis. Fi...
Finding relations among gene expressions involves the definition of the similarity between experimen...
This paper describes the method which allows an estimation of information entropy in the meaning of ...