The aim of the paper is to compare the forecasting performance of a class of statedependent autoregressive (SDAR) models for univariate time series with two alternative families of nonlinear models, such as the SETAR and the GARCH models. The study is conducted on US GDP growth rate using quarterly data. Two methods of forecast comparison are employed. The first method consists in evaluation the average performance by using two measures such as the root mean square error (RMSE) and the mean absolute error (MAE) over different forecast horizons, while the second method make use of one of the most used statistical test to compare the accuracy of two forecast methods such as the Diebold-Mariano test
This study develops a framework for the fitting, analysis, and forecasting of linear and nonlinear t...
In this paper we investigate the multi-period forecast performance of a number of empirical selfexci...
textabstractWe compare the forecasting performance of linear autoregressive models, autoregressive m...
The aim of the paper is to compare the forecasting performance of a class of statedependent autoregr...
We compare a number of methods that have been proposed in the literature for obtaining h-step ahead ...
While there has been a great deal of interest in the modelling of non-linearities in economic time s...
Numerous time series models are available for forecasting economic output. Autoregressive models wer...
This paper investigates the forecasting performance of the non-linear time series SETAR model by usi...
In this paper, we do a comprehensive comparison of forecasting Gross Domestic Product (GDP) growth u...
textabstractWe consider the usefulness of the two-regime SETAR model for out-of-sample forecasting, ...
Forecasting is an important tool for management, planning and administration in various fields. In t...
In this paper we consider a class of nonlinear autoregressive models in which a specific type of dep...
We compare a number of methods that have been proposed in the literature for obtaining h-step ahead ...
The purpose of this thesis is to determine the best linear time series model for forecasting Swedish...
We compare linear autoregressive (AR) models and self-exciting threshold autoregressive (SETAR) mode...
This study develops a framework for the fitting, analysis, and forecasting of linear and nonlinear t...
In this paper we investigate the multi-period forecast performance of a number of empirical selfexci...
textabstractWe compare the forecasting performance of linear autoregressive models, autoregressive m...
The aim of the paper is to compare the forecasting performance of a class of statedependent autoregr...
We compare a number of methods that have been proposed in the literature for obtaining h-step ahead ...
While there has been a great deal of interest in the modelling of non-linearities in economic time s...
Numerous time series models are available for forecasting economic output. Autoregressive models wer...
This paper investigates the forecasting performance of the non-linear time series SETAR model by usi...
In this paper, we do a comprehensive comparison of forecasting Gross Domestic Product (GDP) growth u...
textabstractWe consider the usefulness of the two-regime SETAR model for out-of-sample forecasting, ...
Forecasting is an important tool for management, planning and administration in various fields. In t...
In this paper we consider a class of nonlinear autoregressive models in which a specific type of dep...
We compare a number of methods that have been proposed in the literature for obtaining h-step ahead ...
The purpose of this thesis is to determine the best linear time series model for forecasting Swedish...
We compare linear autoregressive (AR) models and self-exciting threshold autoregressive (SETAR) mode...
This study develops a framework for the fitting, analysis, and forecasting of linear and nonlinear t...
In this paper we investigate the multi-period forecast performance of a number of empirical selfexci...
textabstractWe compare the forecasting performance of linear autoregressive models, autoregressive m...