This paper presents FeaSANNT, an evolutionary procedure for feature selection and weight training for neural network classifiers. FeaSANNT exploits the global nature of evolutionary search to avoid sub-optimal peaks of performance. FeaSANNT was used to train a multi-layer perceptron classifier on seven benchmark problems. FeaSANNT attained accurate and consistent learning results, and significantly reduced the number of data attributes compared to four state-of-the-art standard filter and wrapper feature selection methods. Thanks to the robustness of evolutionary search, FeaSANNT did not require time-consuming re-tuning of the learning parameters for each test problem
Many practical pattern classi cation applications require a careful selection of attributes or featu...
This paper investigates the effectiveness and efficiency of two competitive (predator-prey) evolutio...
First Online: 24 November 2020Feature selection plays a central role in predictive analysis where da...
Computational time is high for Multilayer perceptron (MLP) trained with back propagation learning al...
A framework that combines feature selection with evolution ary artificial neural networks is present...
This paper sums up the main contributions of the PhD Dissertation with an homonymous name to the cur...
The aim of Neuroevolution is to find neural networks and convolutional neural network (CNN) architec...
Although Artificial Neural Networks (ANNs) are important Data Mining techniques, the search for the ...
Practical pattern classification and knowledge discovery problems require selection of a subset of a...
Learning and evolution are two fundamental forms of adaptation. There has been a great interest in c...
Evolutionary Computation (EC) approaches are inspired by nature and solve optimization problems in a...
Yang S, Tian Y, He C, Zhang X, Tan KC, Jin Y. A Gradient-Guided Evolutionary Approach to Training De...
Most advances on the Evolutionary Algorithm optimisation of Neural Network are on recurrent neural n...
Feature selection techniques try to select the most suitable subset from a set of attributes, some o...
Data mining and machine learning have become enormously pivotal in this Big Data time, as people are...
Many practical pattern classi cation applications require a careful selection of attributes or featu...
This paper investigates the effectiveness and efficiency of two competitive (predator-prey) evolutio...
First Online: 24 November 2020Feature selection plays a central role in predictive analysis where da...
Computational time is high for Multilayer perceptron (MLP) trained with back propagation learning al...
A framework that combines feature selection with evolution ary artificial neural networks is present...
This paper sums up the main contributions of the PhD Dissertation with an homonymous name to the cur...
The aim of Neuroevolution is to find neural networks and convolutional neural network (CNN) architec...
Although Artificial Neural Networks (ANNs) are important Data Mining techniques, the search for the ...
Practical pattern classification and knowledge discovery problems require selection of a subset of a...
Learning and evolution are two fundamental forms of adaptation. There has been a great interest in c...
Evolutionary Computation (EC) approaches are inspired by nature and solve optimization problems in a...
Yang S, Tian Y, He C, Zhang X, Tan KC, Jin Y. A Gradient-Guided Evolutionary Approach to Training De...
Most advances on the Evolutionary Algorithm optimisation of Neural Network are on recurrent neural n...
Feature selection techniques try to select the most suitable subset from a set of attributes, some o...
Data mining and machine learning have become enormously pivotal in this Big Data time, as people are...
Many practical pattern classi cation applications require a careful selection of attributes or featu...
This paper investigates the effectiveness and efficiency of two competitive (predator-prey) evolutio...
First Online: 24 November 2020Feature selection plays a central role in predictive analysis where da...