The classical NBER leading indicators model was built solely within a linear framework. With recent developments in nonlinear time-series analysis, several authors have begun to examine the forecasting properties of nonlinear models in the field of forecasting business cycles. The research presented in this paper focuses on the development of a new approach to forecasting with leading indicators based on neural networks. Empirical results are presented for forecasting the Index of Industrial Production. The results demonstrate that a superior performance can be obtained relative to the classical model.
The problem of predicting nonlinear and nonstationary signals is complex since the physical law that...
Time series can contain both linear and nonlinear components, and linear and nonlinear artificial ne...
Linear models reach their limitations in applications with nonlinearities in the data. In this paper...
The value of neural network models in forecasting economic time series has been established for Nort...
This paper analyzes the possibilities of using convolutional and recurrent neural networks to predic...
Mattina of Finance Canada and Alain Paquet of UQAM for their helpful comments. The views expressed i...
This paper is devoted the simulation and forecast of dynamical series of the economical indicators....
This research work investigates the possibility to apply several neural network architectures for si...
The complexity of economic processes is reflected in the time series which register their state. Not...
Often, the nature of many real life processes, especially in management and business fields are nonl...
Abstract. – Prediction of financial time series using artificial neural networks has been the subjec...
Abslract. In this paper, the methods of time series for nonlinearity are briefly surveyed, with part...
This paper is concerned with approximating nonlinear time series by an artificial neural network bas...
This study proposes a nonlinear generalisation of factor models based on artificial neural networks ...
Prediction of financial time series using artificial neural networks has been the subject of many pu...
The problem of predicting nonlinear and nonstationary signals is complex since the physical law that...
Time series can contain both linear and nonlinear components, and linear and nonlinear artificial ne...
Linear models reach their limitations in applications with nonlinearities in the data. In this paper...
The value of neural network models in forecasting economic time series has been established for Nort...
This paper analyzes the possibilities of using convolutional and recurrent neural networks to predic...
Mattina of Finance Canada and Alain Paquet of UQAM for their helpful comments. The views expressed i...
This paper is devoted the simulation and forecast of dynamical series of the economical indicators....
This research work investigates the possibility to apply several neural network architectures for si...
The complexity of economic processes is reflected in the time series which register their state. Not...
Often, the nature of many real life processes, especially in management and business fields are nonl...
Abstract. – Prediction of financial time series using artificial neural networks has been the subjec...
Abslract. In this paper, the methods of time series for nonlinearity are briefly surveyed, with part...
This paper is concerned with approximating nonlinear time series by an artificial neural network bas...
This study proposes a nonlinear generalisation of factor models based on artificial neural networks ...
Prediction of financial time series using artificial neural networks has been the subject of many pu...
The problem of predicting nonlinear and nonstationary signals is complex since the physical law that...
Time series can contain both linear and nonlinear components, and linear and nonlinear artificial ne...
Linear models reach their limitations in applications with nonlinearities in the data. In this paper...