Artificial neural networks have proven to be effective in a wide range of fields, providing solutions to various problems. Training artificial neural networks using evolutionary algorithms is known as neuroevolution. The idea of finding not only the optimal weights and biases of a neural network but also its architecture has drawn the attention of many researchers. In this paper, we use different biologically inspired optimization algorithms to train multilayer perceptron neural networks for generating regression models. Specifically, our contribution involves analyzing and finding a strategy for combining several algorithms into a hybrid ensemble optimizer, which we apply for the optimization of a fully connected neural network. The goal i...
Artificial neural networks (ANNs) are comparatively straightforward to understand and use in the ana...
The optimal operation of chemical processes provides the foundation for optimization problems to det...
We study optimization problems where the objective function is modeled through feedforward neural ne...
Neural networks have demonstrated their usefulness for solving complex regression problems in circum...
Artificial neural networks are widely used in data analysis and to control dynamic processes. These ...
Although Artificial Neural Networks (ANNs) are important Data Mining techniques, the search for the ...
Process modeling and optimization of polymerization processes with long chain branching is currently...
Machine learning models can learn complex relationships from data and have led to breakthrough resul...
Artificial Neural Networks (ANNs) are important Data Mining (DM) techniques. Yet, the search for t...
Evolutionary algorithms (EAs) are very popular tools to design and evolve artificial neural networks...
Comunicação aprovada à ICANGA March 2005, Coimbra.The Multilayer Perceptrons (MLPs) are the most pop...
Regularization is an essential technique to improve generalization of neural networks. Traditionally...
Understanding intelligence and how it allows humans to learn, to make decision and form memories, is...
Lead Optimization is a complex process, whereby a large number of interacting entities give rise to ...
Machine learning has the potential to dramatically accelerate high-throughput approaches to material...
Artificial neural networks (ANNs) are comparatively straightforward to understand and use in the ana...
The optimal operation of chemical processes provides the foundation for optimization problems to det...
We study optimization problems where the objective function is modeled through feedforward neural ne...
Neural networks have demonstrated their usefulness for solving complex regression problems in circum...
Artificial neural networks are widely used in data analysis and to control dynamic processes. These ...
Although Artificial Neural Networks (ANNs) are important Data Mining techniques, the search for the ...
Process modeling and optimization of polymerization processes with long chain branching is currently...
Machine learning models can learn complex relationships from data and have led to breakthrough resul...
Artificial Neural Networks (ANNs) are important Data Mining (DM) techniques. Yet, the search for t...
Evolutionary algorithms (EAs) are very popular tools to design and evolve artificial neural networks...
Comunicação aprovada à ICANGA March 2005, Coimbra.The Multilayer Perceptrons (MLPs) are the most pop...
Regularization is an essential technique to improve generalization of neural networks. Traditionally...
Understanding intelligence and how it allows humans to learn, to make decision and form memories, is...
Lead Optimization is a complex process, whereby a large number of interacting entities give rise to ...
Machine learning has the potential to dramatically accelerate high-throughput approaches to material...
Artificial neural networks (ANNs) are comparatively straightforward to understand and use in the ana...
The optimal operation of chemical processes provides the foundation for optimization problems to det...
We study optimization problems where the objective function is modeled through feedforward neural ne...