Nalini Ravishanker, Zhaohui Liu, et al.
CSDA
This paper presents and evaluates alternative methods for multi-step forecasting using univariate and multivariate functional coefficient autoregressive (FCAR) models. The methods include a simple "plug-in" approach, a bootstrap-based approach, and a multi-stage smoothing approach, where the functional coefficients are updated at each step to incorporate information from the time series captured in the previous predictions. The three methods are applied to a series of U.S. GNP and unemployment data to compare performance in practice. We find that the bootstrap-based approach out-performs the other two methods for nonlinear prediction, and that little forecast accuracy is sacrificed using any of the methods if the underlying process is actually linear. © 2005 International Institute of Forecasters. Published by Elsevier B.V. All rights reserved.
Nalini Ravishanker, Zhaohui Liu, et al.
CSDA
Jane L. Harvill, Bonnie K. Ray
CSDA
Jesus Rios, K. Anikeev, et al.
IBM J. Res. Dev
Bonnie K. Ray, Shu Tao, et al.
EURO Journal on Decision Processes