The use of neural networks for time series prediction has been an important focus of recent research. Multi-objective optimization techniques have been used for training neural networks for time series prediction. Cooperative coevolution is an evolutionary computation method that decomposes the problem into subcomponents and has shown promising results for training neural networks. This paper presents a multi-objective cooperative coevolutionary method for training neural networks where the training data set is processed to obtain the different objectives for multi-objective evolutionary training of the neural network. We use different time lags as multi-objective criterion. The trained multi-objective neural network can give prediction of...
This paper presents a cooperative coevolutive approach for designing neural network ensembles. Coope...
In this paper we investigate the effective design of an appropriate neural network model for time se...
Multi-step-ahead time series prediction has been one of the greatest challenges for machine learning...
Cooperative coevolution is an evolutionary computation method which solves a problem by decomposing ...
Collaboration enables weak species to survive in an environment where different species compete for...
Cooperative coevolution decomposes a problem into subcomponents and employs evolutionary algorithms ...
Problem decomposition is an important aspect in using cooperative coevolution for neuro-evolution. C...
Feature reconstruction of time series problems produces reconstructed state-space vectors that are u...
Problem decomposition, is vital in employing cooperative coevolution for neuro-evolution. Different...
Intelligent financial prediction systems guide investors in making good investments. Investors are ...
A major concern in cooperative coevolution for neuro-evolution is the appropriate problem decomposit...
The breaking down of a particular problem through problem decomposition has enabled complex problems...
The breaking down of a particular problem through problem decomposition has enabled complex problems...
Abstract—This paper presents a cooperative coevolutive ap-proach for designing neural network ensemb...
Smith C, Jin Y. Evolutionary multi-objective generation of recurrent neural network ensembles for ti...
This paper presents a cooperative coevolutive approach for designing neural network ensembles. Coope...
In this paper we investigate the effective design of an appropriate neural network model for time se...
Multi-step-ahead time series prediction has been one of the greatest challenges for machine learning...
Cooperative coevolution is an evolutionary computation method which solves a problem by decomposing ...
Collaboration enables weak species to survive in an environment where different species compete for...
Cooperative coevolution decomposes a problem into subcomponents and employs evolutionary algorithms ...
Problem decomposition is an important aspect in using cooperative coevolution for neuro-evolution. C...
Feature reconstruction of time series problems produces reconstructed state-space vectors that are u...
Problem decomposition, is vital in employing cooperative coevolution for neuro-evolution. Different...
Intelligent financial prediction systems guide investors in making good investments. Investors are ...
A major concern in cooperative coevolution for neuro-evolution is the appropriate problem decomposit...
The breaking down of a particular problem through problem decomposition has enabled complex problems...
The breaking down of a particular problem through problem decomposition has enabled complex problems...
Abstract—This paper presents a cooperative coevolutive ap-proach for designing neural network ensemb...
Smith C, Jin Y. Evolutionary multi-objective generation of recurrent neural network ensembles for ti...
This paper presents a cooperative coevolutive approach for designing neural network ensembles. Coope...
In this paper we investigate the effective design of an appropriate neural network model for time se...
Multi-step-ahead time series prediction has been one of the greatest challenges for machine learning...