In this paper, we discuss some practical implications for implementing adaptable network algorithms applied to non-stationary time series problems. Two real world data sets, containing electricity load demands and foreign exchange market prices, are used to test several different methods, ranging from linear models with fixed parameters, to non-linear models which adapt both parameters and model order on-line. Training with the extended Kalman filter, we demonstrate that the dynamic model-order increment procedure of the resource allocating RBF network (RAN) is highly sensitive to the parameters of the novelty criterion. We investigate the use of system noise for increasing the plasticity of the Kalman filter training algorithm, and discuss...
This paper describes a novel on-line learning approach for radial basis function (RBF) neural networ...
Artificial neural networks (NNs) are widely used in modeling and forecasting time series. Since most...
The object of research. The object of research is modeling and forecasting nonlinear nonstationary p...
In this paper, we discuss some practical implications for implementing adaptable network algorithms ...
This paper reports preliminary progress on a principled approach to modelling nonstationary phenomen...
Online model order complexity estimation remains one of the key problems in neural network research....
<p>In this paper, we propose a new learning algorithm for non-stationary Dynamic Bayesian Networks i...
This paper develops a method of adaptive modeling that may be applied to forecast non-stationary tim...
Time series forecasting is a very important research area because of its practical application in m...
In the analysis and prediction of many real-world time series, the assumption of stationarity is not...
We present data-dependent learning bounds for the general scenario of non-stationary non-mixing stoc...
In time series analysis, most of the models are based on the assumption of covariance stationarity. ...
For a learning model to be effective in online modeling of nonstationary data, it must not only be ...
When processing non-stationary time series data by statistical methods, they must be stationarized. ...
Proceeding of: 2013 IEEE Congress on Evolutionary Computation (CEC), Cancun, 20-23 June 2013Learning...
This paper describes a novel on-line learning approach for radial basis function (RBF) neural networ...
Artificial neural networks (NNs) are widely used in modeling and forecasting time series. Since most...
The object of research. The object of research is modeling and forecasting nonlinear nonstationary p...
In this paper, we discuss some practical implications for implementing adaptable network algorithms ...
This paper reports preliminary progress on a principled approach to modelling nonstationary phenomen...
Online model order complexity estimation remains one of the key problems in neural network research....
<p>In this paper, we propose a new learning algorithm for non-stationary Dynamic Bayesian Networks i...
This paper develops a method of adaptive modeling that may be applied to forecast non-stationary tim...
Time series forecasting is a very important research area because of its practical application in m...
In the analysis and prediction of many real-world time series, the assumption of stationarity is not...
We present data-dependent learning bounds for the general scenario of non-stationary non-mixing stoc...
In time series analysis, most of the models are based on the assumption of covariance stationarity. ...
For a learning model to be effective in online modeling of nonstationary data, it must not only be ...
When processing non-stationary time series data by statistical methods, they must be stationarized. ...
Proceeding of: 2013 IEEE Congress on Evolutionary Computation (CEC), Cancun, 20-23 June 2013Learning...
This paper describes a novel on-line learning approach for radial basis function (RBF) neural networ...
Artificial neural networks (NNs) are widely used in modeling and forecasting time series. Since most...
The object of research. The object of research is modeling and forecasting nonlinear nonstationary p...