To predict the 100 missing values from a time series of 5000 data points, given for the IJCNN 2004 time series prediction competition, recurrent neural networks (RNNs) are trained with a new learning algorithm. This training algorithm is based on a hybrid of particle swarm optimization (PSO) and evolutionary algorithm (EA). by combining the searching abilities of these two global optimization methods, the evolution of individuals is no longer restricted to be in the same generation, and better performing individuals may produce offspring to replace those with poor performance. Experimental results show that RNNs, trained by the hybrid algorithm, are able to predict the missing values in the time series with minimum error, in comparison with...
Recurrent Neural Networks (RNNs) have become competitive forecasting methods, as most notably shown ...
Recurrent neural networks have been used for time-series prediction with good results. In this disse...
Real-world time series such as econometric time series are rarely linear and they have characteristi...
To predict the 100 missing values from the time series consisting of 5000 data given for the IJCNN 2...
Deep artificial neural networks have been popular for time series forecasting literature in recent y...
Ensembles have been shown to provide better generalization performance than single models. However, ...
Artificial neural networks (NNs) are widely used in modeling and forecasting time series. Since most...
Time series forecasting is a very important research area because of its practical application in m...
In this paper we investigate the effective design of an appropriate neural network model for time se...
In this thesis, artificial neural networks (ANNs) are used for prediction of financial and macroecon...
This chapter presents a hybrid Evolutionary Computation/Neural Network combination for time series p...
WOS: 000472482200003Time series prediction is a remarkable research interest that is widely followed...
ABSTRACT This paper presents an study about a new Hybrid method -GRASPES -for time series prediction...
International audienceEnsemble methods for classification and regression have focused a great deal o...
This paper reports about a comparative study on several linear and nonlinear feedforward and recurre...
Recurrent Neural Networks (RNNs) have become competitive forecasting methods, as most notably shown ...
Recurrent neural networks have been used for time-series prediction with good results. In this disse...
Real-world time series such as econometric time series are rarely linear and they have characteristi...
To predict the 100 missing values from the time series consisting of 5000 data given for the IJCNN 2...
Deep artificial neural networks have been popular for time series forecasting literature in recent y...
Ensembles have been shown to provide better generalization performance than single models. However, ...
Artificial neural networks (NNs) are widely used in modeling and forecasting time series. Since most...
Time series forecasting is a very important research area because of its practical application in m...
In this paper we investigate the effective design of an appropriate neural network model for time se...
In this thesis, artificial neural networks (ANNs) are used for prediction of financial and macroecon...
This chapter presents a hybrid Evolutionary Computation/Neural Network combination for time series p...
WOS: 000472482200003Time series prediction is a remarkable research interest that is widely followed...
ABSTRACT This paper presents an study about a new Hybrid method -GRASPES -for time series prediction...
International audienceEnsemble methods for classification and regression have focused a great deal o...
This paper reports about a comparative study on several linear and nonlinear feedforward and recurre...
Recurrent Neural Networks (RNNs) have become competitive forecasting methods, as most notably shown ...
Recurrent neural networks have been used for time-series prediction with good results. In this disse...
Real-world time series such as econometric time series are rarely linear and they have characteristi...