Cooperative coevolution is a promising method for training neural networks which is also known as cooperative neuro-evolution. Cooperative neuro-evolution has been used for pattern classification, time series prediction and global optimisation problems. In the past, competitive island based cooperative coevolution has been proposed that employed different instances of problem decomposition methods for competition. Neuro-evolution has limitations in terms of training time although they are known as global search methods. Backpropagation algorithm employs gradient descent which helps in faster convergence which is needed for neuro-evolution. Backpropagation suffers from premature convergence and its combination with neuro-evolution can help ...
Cooperative coevolution has proven to be efficient in solving global optimisation and real world ap...
Abstract—This paper presents a cooperative coevolutive ap-proach for designing neural network ensemb...
Artificial neural networks have been widely used for machine learning and optimization.A neuro ensem...
In the application of cooperative coevolution for neuro-evolution, problem decomposition methods re...
Problem decomposition is an important aspect in using cooperative coevolution for neuro-evolution. C...
Collaboration enables weak species to survive in an environment where different species compete for...
Problem decomposition, is vital in employing cooperative coevolution for neuro-evolution. Different...
One way to train neural networks is to use evolutionary algorithms such as cooperative coevolution -...
This paper presents a cooperative coevolutive approach for designing neural network ensembles. Coope...
A major concern in cooperative coevolution for neuro-evolution is the appropriate problem decomposit...
Cooperative coevolution is an evolutionary computation method which solves a problem by decomposing ...
Cooperative coevolution decomposes an optimi- sation problem into subcomponents and collectively so...
This paper investigates the effectiveness and efficiency of two competitive (predator-prey) evolutio...
Feature reconstruction of time series problems produces reconstructed state-space vectors that are u...
When evolving a game-playing neural network, fitness is usually measured by playing against existing...
Cooperative coevolution has proven to be efficient in solving global optimisation and real world ap...
Abstract—This paper presents a cooperative coevolutive ap-proach for designing neural network ensemb...
Artificial neural networks have been widely used for machine learning and optimization.A neuro ensem...
In the application of cooperative coevolution for neuro-evolution, problem decomposition methods re...
Problem decomposition is an important aspect in using cooperative coevolution for neuro-evolution. C...
Collaboration enables weak species to survive in an environment where different species compete for...
Problem decomposition, is vital in employing cooperative coevolution for neuro-evolution. Different...
One way to train neural networks is to use evolutionary algorithms such as cooperative coevolution -...
This paper presents a cooperative coevolutive approach for designing neural network ensembles. Coope...
A major concern in cooperative coevolution for neuro-evolution is the appropriate problem decomposit...
Cooperative coevolution is an evolutionary computation method which solves a problem by decomposing ...
Cooperative coevolution decomposes an optimi- sation problem into subcomponents and collectively so...
This paper investigates the effectiveness and efficiency of two competitive (predator-prey) evolutio...
Feature reconstruction of time series problems produces reconstructed state-space vectors that are u...
When evolving a game-playing neural network, fitness is usually measured by playing against existing...
Cooperative coevolution has proven to be efficient in solving global optimisation and real world ap...
Abstract—This paper presents a cooperative coevolutive ap-proach for designing neural network ensemb...
Artificial neural networks have been widely used for machine learning and optimization.A neuro ensem...