The larger the size of the data, structured or unstructured, the harder to understand and make use of it. One of the fundamentals to machine learning is feature selection. Feature selection, by reducing the number of irrelevant/redundant features, dramatically reduces the run time of a learning algorithm and leads to a more general concept. In this paper, realization of feature selection through a neural network based algorithm, with the aid of a topology optimizer genetic algorithm, is investigated. We have utilized NeuroEvolution of Augmenting Topologies (NEAT) to select a subset of features with the most relevant connection to the target concept. Discovery and improvement of solutions are two main goals of machine learning, however, the ...
An important question in neuroevolution is how to gain an advantage from evolving neural network top...
Features gathered from the observation of a phenomenon are not all equally informative: some of them...
be time-consuming due to the selection of input features for the Multi Layer Perceptron(MLP). The nu...
The larger the size of the data, structured or unstructured, the harder to understand and make use o...
AN ABSTRACT OF THE THESIS OF SOROOSH SOHANGIR, for the MASTER OF SCIENCE degree in COMPUTER SCIENCE...
Feature selection is the process of finding the set of inputs to a machine learning algorithm that w...
This article describes a series of experiments used to analyze the FS-NEAT method on a double pole-b...
First Online: 24 November 2020Feature selection plays a central role in predictive analysis where da...
Feature selection is an integral part of most learning algorithms. By selecting relevant features of...
The aim of this work is the genetic design of neural networks, which are able to classify within var...
Neuroevolution, i.e. evolving artificial neural networks with genetic algorithms, has been highly ef...
Practical pattern classification and knowledge discovery problems require selection of a subset of a...
Most advances on the Evolutionary Algorithm optimisation of Neural Network are on recurrent neural n...
Practical pattern classication and knowledge discovery problems require selection of a subset of att...
Designing neural networks topologies is s complicated problem when we consider general network struc...
An important question in neuroevolution is how to gain an advantage from evolving neural network top...
Features gathered from the observation of a phenomenon are not all equally informative: some of them...
be time-consuming due to the selection of input features for the Multi Layer Perceptron(MLP). The nu...
The larger the size of the data, structured or unstructured, the harder to understand and make use o...
AN ABSTRACT OF THE THESIS OF SOROOSH SOHANGIR, for the MASTER OF SCIENCE degree in COMPUTER SCIENCE...
Feature selection is the process of finding the set of inputs to a machine learning algorithm that w...
This article describes a series of experiments used to analyze the FS-NEAT method on a double pole-b...
First Online: 24 November 2020Feature selection plays a central role in predictive analysis where da...
Feature selection is an integral part of most learning algorithms. By selecting relevant features of...
The aim of this work is the genetic design of neural networks, which are able to classify within var...
Neuroevolution, i.e. evolving artificial neural networks with genetic algorithms, has been highly ef...
Practical pattern classification and knowledge discovery problems require selection of a subset of a...
Most advances on the Evolutionary Algorithm optimisation of Neural Network are on recurrent neural n...
Practical pattern classication and knowledge discovery problems require selection of a subset of att...
Designing neural networks topologies is s complicated problem when we consider general network struc...
An important question in neuroevolution is how to gain an advantage from evolving neural network top...
Features gathered from the observation of a phenomenon are not all equally informative: some of them...
be time-consuming due to the selection of input features for the Multi Layer Perceptron(MLP). The nu...