NeuroEvolution is the application of Evolutionary Algorithms to the training of Artificial Neural Networks. NeuroEvolution is thought to possess many benefits over traditional training methods including: the ability to train recurrent network structures, the capability to adapt network topology, being able to create heterogeneous networks of arbitrary transfer functions, and allowing application to reinforcement as well as supervised learning tasks. This thesis presents a series of rigorous empirical investigations into many of these perceived advantages of NeuroEvolution. In this work it is demonstrated that the ability to simultaneously adapt network topology along with connection weights represents a significant advantage of many Neur...
are encoded and evolved using a representation adapted from the CGP. We have tested the new approach...
Artificial neural networks (ANNs) are applied to many real-world problems, ranging from pattern clas...
Abstract: This work presents a method for exploiting developmental plasticity in Artificial Neural N...
to the training of Artificial Neural Networks. NeuroEvolution has a number of key advantages over tr...
Evolutionary computation has been around ever since the late 50s. This thesis aims at elaborate on g...
International audienceIn general, the topology of Artificial Neural Networks (ANNs) is human-enginee...
Automated design of artificial neural networks by evolutionary algorithms (neuroevolution) has gener...
In machine learning, the problem of data classification consists of correctly labeling unknown inst...
Although artificial neural networks have taken their inspiration from natural neuro-logical systems ...
In this contribution we present a novel method, called Evolutionary Acquisition of Neural Topologies...
Neuroevolution, i.e. evolving artificial neural networks with genetic algorithms, has been highly ef...
Both genetic programming and neural networks are machine learning techniques that have had a wide ra...
Most contemporary connectionist approaches to AI use an Aritifical Neural Network (ANN) approach whi...
Neuroevolution, i.e. evolution of artificial neural networks, has recently emerged as a powerful tec...
We develop a tree-based genetic programming system, capable of modelling evolvability during evoluti...
are encoded and evolved using a representation adapted from the CGP. We have tested the new approach...
Artificial neural networks (ANNs) are applied to many real-world problems, ranging from pattern clas...
Abstract: This work presents a method for exploiting developmental plasticity in Artificial Neural N...
to the training of Artificial Neural Networks. NeuroEvolution has a number of key advantages over tr...
Evolutionary computation has been around ever since the late 50s. This thesis aims at elaborate on g...
International audienceIn general, the topology of Artificial Neural Networks (ANNs) is human-enginee...
Automated design of artificial neural networks by evolutionary algorithms (neuroevolution) has gener...
In machine learning, the problem of data classification consists of correctly labeling unknown inst...
Although artificial neural networks have taken their inspiration from natural neuro-logical systems ...
In this contribution we present a novel method, called Evolutionary Acquisition of Neural Topologies...
Neuroevolution, i.e. evolving artificial neural networks with genetic algorithms, has been highly ef...
Both genetic programming and neural networks are machine learning techniques that have had a wide ra...
Most contemporary connectionist approaches to AI use an Aritifical Neural Network (ANN) approach whi...
Neuroevolution, i.e. evolution of artificial neural networks, has recently emerged as a powerful tec...
We develop a tree-based genetic programming system, capable of modelling evolvability during evoluti...
are encoded and evolved using a representation adapted from the CGP. We have tested the new approach...
Artificial neural networks (ANNs) are applied to many real-world problems, ranging from pattern clas...
Abstract: This work presents a method for exploiting developmental plasticity in Artificial Neural N...