Interval time series prediction is one of the most challenging research topics in the field of time series modeling and prediction. In view of the remarkable function approximation capability of fully complex-valued radial basis function neural networks (FCRBFNNs), we set out to investigate the possibility of forecasting interval time series by denoting the lower and upper bounds of the interval as real and imaginary parts of a complex number, respectively. This results in a complex-valued interval. We then model the resulted complex-valued interval time series via a FCRBFNN. Furthermore, we propose to evolve the FCRBFNN by using particle swarm optimization (PSO) and discrete PSO for joint optimization of the structure and parameters. Final...
The article is devoted to the new method of preparation of time series data and its prediction made ...
Recent work showed that Bayesian formulation of the neural networks' training problem provide a nat...
Stock market is an important part of economy. How to effectively predict it to maximize the interes...
AbstractThe paper presents a low complexity recurrent Functional Link Artificial Neural Network for ...
This paper presents a novel dimension of neural networks through the approach of interval systems fo...
We introduce a novel predictive statistical modeling technique called Hybrid Radial Basis Function N...
To predict the 100 missing values from a time series of 5000 data points, given for the IJCNN 2004 t...
Vita.A feedforward neural model, the radial basis functions (RBF) network, was utilized to forecast ...
Deep artificial neural networks have been popular for time series forecasting literature in recent y...
several neural network architectures to the problem of simulating and predicting the dynamic behavio...
The paper examines a task of forecasting stock prices of Riga Stock exchange by the use of interval ...
Artificial neural network approach is a well-known method that is a useful tool for time series fore...
Abstract: Neural networks are a consistent example of non-parametric estimation, with powerful unive...
Recurrent neural networks (RNN) enable to model dynamical sys- tems with variable input length. Thei...
Artificial neural networks (ANN) are typically composed of a large number of nonlinear functions (ne...
The article is devoted to the new method of preparation of time series data and its prediction made ...
Recent work showed that Bayesian formulation of the neural networks' training problem provide a nat...
Stock market is an important part of economy. How to effectively predict it to maximize the interes...
AbstractThe paper presents a low complexity recurrent Functional Link Artificial Neural Network for ...
This paper presents a novel dimension of neural networks through the approach of interval systems fo...
We introduce a novel predictive statistical modeling technique called Hybrid Radial Basis Function N...
To predict the 100 missing values from a time series of 5000 data points, given for the IJCNN 2004 t...
Vita.A feedforward neural model, the radial basis functions (RBF) network, was utilized to forecast ...
Deep artificial neural networks have been popular for time series forecasting literature in recent y...
several neural network architectures to the problem of simulating and predicting the dynamic behavio...
The paper examines a task of forecasting stock prices of Riga Stock exchange by the use of interval ...
Artificial neural network approach is a well-known method that is a useful tool for time series fore...
Abstract: Neural networks are a consistent example of non-parametric estimation, with powerful unive...
Recurrent neural networks (RNN) enable to model dynamical sys- tems with variable input length. Thei...
Artificial neural networks (ANN) are typically composed of a large number of nonlinear functions (ne...
The article is devoted to the new method of preparation of time series data and its prediction made ...
Recent work showed that Bayesian formulation of the neural networks' training problem provide a nat...
Stock market is an important part of economy. How to effectively predict it to maximize the interes...