\u3cp\u3eMany real-world control and classification tasks involve a large number of features. When artificial neural networks (ANNs) are used for modeling these tasks, the network architectures tend to be large. Neuroevolution is an effective approach for optimizing ANNs; however, there are two bottlenecks that make their application challenging in case of high-dimensional networks using direct encoding. First, classic evolutionary algorithms tend not to scale well for searching large parameter spaces; second, the network evaluation over a large number of training instances is in general time-consuming. In this work, we propose an approach called the Limited Evaluation Cooperative Co-evolutionary Differential Evolution algorithm (LECCDE) to...
Abstract. NeuroEvolution is the application of Evolutionary Algo-rithms to the training of Artificia...
Classification is a machine learning techniqueused to predict group membership for data instances.To...
The structure and performance of neural networks are intimately connected, and by use of evolutionar...
Many real-world control and classification tasks involve a large number of features. When artificial...
A variety of methods have been applied to the architectural configuration and learning or training o...
This paper presents a novel method for the evolution of arti-cial autonomous agents with small neuro...
In the application of cooperative coevolution for neuro-evolution, problem decomposition methods re...
Parameter adaptation is one of the key research fields in the area of evolutionary computation. In t...
Neuro-Evolution is a field of study that has recently gained significantly increased traction in the...
One way to train neural networks is to use evolutionary algorithms such as cooperative coevolution -...
Artificial neural networks (ANNs) are applied to many real-world problems, ranging from pattern clas...
Neuroevolution, i.e. evolving artificial neural networks with genetic algorithms, has been highly ef...
which efficiently adapts the covariance matrix of the mutation distribution, to the optimization of ...
In recent years neuroevolution has become a dynamic and rapidly growing research field. Interest in ...
Neuroevolution, i.e. evolution of artificial neural networks, has recently emerged as a powerful tec...
Abstract. NeuroEvolution is the application of Evolutionary Algo-rithms to the training of Artificia...
Classification is a machine learning techniqueused to predict group membership for data instances.To...
The structure and performance of neural networks are intimately connected, and by use of evolutionar...
Many real-world control and classification tasks involve a large number of features. When artificial...
A variety of methods have been applied to the architectural configuration and learning or training o...
This paper presents a novel method for the evolution of arti-cial autonomous agents with small neuro...
In the application of cooperative coevolution for neuro-evolution, problem decomposition methods re...
Parameter adaptation is one of the key research fields in the area of evolutionary computation. In t...
Neuro-Evolution is a field of study that has recently gained significantly increased traction in the...
One way to train neural networks is to use evolutionary algorithms such as cooperative coevolution -...
Artificial neural networks (ANNs) are applied to many real-world problems, ranging from pattern clas...
Neuroevolution, i.e. evolving artificial neural networks with genetic algorithms, has been highly ef...
which efficiently adapts the covariance matrix of the mutation distribution, to the optimization of ...
In recent years neuroevolution has become a dynamic and rapidly growing research field. Interest in ...
Neuroevolution, i.e. evolution of artificial neural networks, has recently emerged as a powerful tec...
Abstract. NeuroEvolution is the application of Evolutionary Algo-rithms to the training of Artificia...
Classification is a machine learning techniqueused to predict group membership for data instances.To...
The structure and performance of neural networks are intimately connected, and by use of evolutionar...