This book explains the minimum error entropy (MEE) concept applied to data classification machines. Theoretical results on the inner workings of the MEE concept, in its application to solving a variety of classification problems, are presented in the wider realm of risk functionals. Researchers and practitioners also find in the book a detailed presentation of practical data classifiers using MEE. These include multi‐layer perceptrons, recurrent neural networks, complexvalued neural networks, modular neural networks, and decision trees. A clustering algorithm using a MEE‐like concept is also presented. Examples, tests, evaluation experiments and comparison with similar machines using classic approaches, complement the descriptions
2 In this paper, we propose a Minimum Error Entropy with self adjusting step-size (MEE-SAS) as an al...
Following basic principles of information-theoretic learning, in this paper, we propose a novel appr...
Many algorithms of machine learning use an entropy measure as optimization criterion. Among the wide...
We consider the minimum error entropy (MEE) criterion and an empirical risk minimization learn-ing a...
The minimum error entropy (MEE) criterion has been verified as a powerful approach for non-Gaussian ...
Following the basic principles of Information-Theoretic Learning (ITL), in this paper we propose Min...
The minimum error entropy (MEE) criterion has been successfully used in fields such as parameter est...
Abstract The extreme learning machine‐based autoencoder (ELM‐AE) has attracted a lot of attention du...
The minimum error entropy (MEE) algorithm is known to be superior in signal processing applications ...
In the present paper we assess the performance of information-theoretic inspired risks functionals i...
Minimum Error Entropy (MEE) principle is an important approach in Information Theoretical Learning (...
In the machine learning literature we can find numerous methods to solve classification problems. We...
In this paper, we propose Minimum Error Entropy with self adjusting step-size (MEE-SAS) as an altern...
The maximum entropy principle advocates to evaluate events’ probabilities using a distribution that...
The minimum error entropy (MEE) estimation is concerned with the estimation of a certain random vari...
2 In this paper, we propose a Minimum Error Entropy with self adjusting step-size (MEE-SAS) as an al...
Following basic principles of information-theoretic learning, in this paper, we propose a novel appr...
Many algorithms of machine learning use an entropy measure as optimization criterion. Among the wide...
We consider the minimum error entropy (MEE) criterion and an empirical risk minimization learn-ing a...
The minimum error entropy (MEE) criterion has been verified as a powerful approach for non-Gaussian ...
Following the basic principles of Information-Theoretic Learning (ITL), in this paper we propose Min...
The minimum error entropy (MEE) criterion has been successfully used in fields such as parameter est...
Abstract The extreme learning machine‐based autoencoder (ELM‐AE) has attracted a lot of attention du...
The minimum error entropy (MEE) algorithm is known to be superior in signal processing applications ...
In the present paper we assess the performance of information-theoretic inspired risks functionals i...
Minimum Error Entropy (MEE) principle is an important approach in Information Theoretical Learning (...
In the machine learning literature we can find numerous methods to solve classification problems. We...
In this paper, we propose Minimum Error Entropy with self adjusting step-size (MEE-SAS) as an altern...
The maximum entropy principle advocates to evaluate events’ probabilities using a distribution that...
The minimum error entropy (MEE) estimation is concerned with the estimation of a certain random vari...
2 In this paper, we propose a Minimum Error Entropy with self adjusting step-size (MEE-SAS) as an al...
Following basic principles of information-theoretic learning, in this paper, we propose a novel appr...
Many algorithms of machine learning use an entropy measure as optimization criterion. Among the wide...