TY - JOUR
T1 - Linear models, smooth transition autoregressions, and neural networks for forecasting macroeconomic time series
T2 - A re-examination
AU - Teräsvirta, Timo
AU - van Dijk, Dick
AU - Medeiros, Marcelo C.
N1 - This research has been supported by Jan Wallander's and Tom Hedelius's Foundation, Project No. J02-35. The first version of this paper was prepared for the First International Institute of Forecasters’ Workshop “Nonlinearities, Business Cycles and Forecasting,” Madrid, December 2003. Material from the paper has been presented at the workshop in honour of Clive W.J. Granger entitled “Predictive Methodology and Application in Economics and Finance,” La Jolla, CA, January 2004, the conference “Recent Advances in Time Series Analysis,” Protaras, Cyprus, June 2004, the 24th International Symposium on Forecasting, Sydney, July 2004, and seminars at Stockholm School of Economics and Magyar Nemzeti Bank, Budapest. Comments from the participants of these occasions, Alfonso Novales and Mark Watson in particular, are gratefully acknowledged. Any errors and shortcomings in this paper remain our own responsibility.
PY - 2005/10
Y1 - 2005/10
N2 - In this paper, we examine the forecast accuracy of linear autoregressive, smooth transition autoregressive (STAR), and neural network (NN) time series models for 47 monthly macroeconomic variables of the G7 economies. Unlike previous studies that typically consider multiple but fixed model specifications, we use a single but dynamic specification for each model class. The point forecast results indicate that the STAR model generally outperforms linear autoregressive models. It also improves upon several fixed STAR models, demonstrating that careful specification of nonlinear time series models is of crucial importance. The results for neural network models are mixed in the sense that at long forecast horizons, an NN model obtained using Bayesian regularization produces more accurate forecasts than a corresponding model specified using the specific-to-general approach. Reasons for this outcome are discussed.
AB - In this paper, we examine the forecast accuracy of linear autoregressive, smooth transition autoregressive (STAR), and neural network (NN) time series models for 47 monthly macroeconomic variables of the G7 economies. Unlike previous studies that typically consider multiple but fixed model specifications, we use a single but dynamic specification for each model class. The point forecast results indicate that the STAR model generally outperforms linear autoregressive models. It also improves upon several fixed STAR models, demonstrating that careful specification of nonlinear time series models is of crucial importance. The results for neural network models are mixed in the sense that at long forecast horizons, an NN model obtained using Bayesian regularization produces more accurate forecasts than a corresponding model specified using the specific-to-general approach. Reasons for this outcome are discussed.
KW - Forecast combination
KW - Forecast evaluation
KW - Neural network model
KW - Nonlinear forecasting
KW - Nonlinear modelling
UR - https://www.scopus.com/pages/publications/26944442012
UR - https://www.scopus.com/pages/publications/26944442012#tab=citedBy
U2 - 10.1016/j.ijforecast.2005.04.010
DO - 10.1016/j.ijforecast.2005.04.010
M3 - Article
AN - SCOPUS:26944442012
SN - 0169-2070
VL - 21
SP - 755
EP - 774
JO - International Journal of Forecasting
JF - International Journal of Forecasting
IS - 4
ER -