The object of research. The object of research is modeling and forecasting nonlinear nonstationary processes presented in the form of time-series data. Investigated problem. There are several popular approaches to solving the problems of adequate model constructing and forecasting nonlinear nonstationary processes, such as autoregressive models and recurrent neural networks. However, each of them has its advantages and drawbacks. Autoregressive models cannot deal with the nonlinear or combined influence of previous states or external factors. Recurrent neural networks are computationally expensive and cannot work with sequences of high length or frequency. The main scientific result. The model for forecasting nonlinear nonstationary pro...
A new method to construct nonparametric prediction intervals for nonlinear time series data is propo...
This study proposes a nonlinear generalisation of factor models based on artificial neural networks ...
Several paradigms are available for developing nonlinear dynamic input-output models of processes. P...
The object of research. The object of research is modeling and forecasting nonlinear nonstationary p...
Artificial neural network approach is a well-known method that is a useful tool for time series fore...
The problem of predicting nonlinear and nonstationary signals is complex since the physical law that...
This paper is concerned with approximating nonlinear time series by an artificial neural network bas...
Conventional time series analysis depends heavily on the twin assumptions of linearity and stationar...
summary:Artificial neural networks (ANN) have received a great deal of attention in many fields of e...
The analysis of a time series is a problem well known to statisticians. Neural networks form the bas...
When processing non-stationary time series data by statistical methods, they must be stationarized. ...
In nonlinear time series forecasting, neural networks are interpreted as a nonlinear autoregressive ...
This paper is concerned with modelling time series by single hidden-layer feedforward neural network...
AbstractArtificial neural networks (ANN) have been widely used in recent years to model non-linear t...
When forecasting time series, it is important to classify them according linearity behavior that the...
A new method to construct nonparametric prediction intervals for nonlinear time series data is propo...
This study proposes a nonlinear generalisation of factor models based on artificial neural networks ...
Several paradigms are available for developing nonlinear dynamic input-output models of processes. P...
The object of research. The object of research is modeling and forecasting nonlinear nonstationary p...
Artificial neural network approach is a well-known method that is a useful tool for time series fore...
The problem of predicting nonlinear and nonstationary signals is complex since the physical law that...
This paper is concerned with approximating nonlinear time series by an artificial neural network bas...
Conventional time series analysis depends heavily on the twin assumptions of linearity and stationar...
summary:Artificial neural networks (ANN) have received a great deal of attention in many fields of e...
The analysis of a time series is a problem well known to statisticians. Neural networks form the bas...
When processing non-stationary time series data by statistical methods, they must be stationarized. ...
In nonlinear time series forecasting, neural networks are interpreted as a nonlinear autoregressive ...
This paper is concerned with modelling time series by single hidden-layer feedforward neural network...
AbstractArtificial neural networks (ANN) have been widely used in recent years to model non-linear t...
When forecasting time series, it is important to classify them according linearity behavior that the...
A new method to construct nonparametric prediction intervals for nonlinear time series data is propo...
This study proposes a nonlinear generalisation of factor models based on artificial neural networks ...
Several paradigms are available for developing nonlinear dynamic input-output models of processes. P...