In this paper we extend the Baillie and Baltagi (1999) paper (Prediction from the regression model with one-way error components. In Analysis of Panels and Limited Dependent Variables Models, Hsiao C, Lahiri K, Lee LF, Pesaran H (eds). Cambridge University Press, Cambridge, UK). In particular, we de
Prediction from the One-Way Error Components Model with AR(1) Disturbances
β Scribed by Eugene Kouassi; Joel Sango; J.M. Bosson Brou; Francis N. Teubissi; Kern O. Kymn
- Publisher
- John Wiley and Sons
- Year
- 2011
- Tongue
- English
- Weight
- 149 KB
- Volume
- 31
- Category
- Article
- ISSN
- 0277-6693
- DOI
- 10.1002/for.1233
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β¦ Synopsis
ABSTRACT
In this paper we extend the works of Baillie and Baltagi (1999, in Analysis of Panels and Limited Dependent Variables Models, Hsiao C et al. (eds). Cambridge University Press: Cambridge, UK; 255β267) and generalize certain results from the Baltagi and Li (1992, Journal of Forecasting 11: 561β567) paper accounting for AR(1) errors in the disturbance term. In particular, we derive six predictors for the oneβway error components model, as well as their associated asymptotic mean squared error of multiβstep prediction in the presence of AR(1) errors in the disturbance term. In addition, we also provide both theoretical and simulation evidence as to the relative efficiency of our alternative predictors. The adequacy of the prediction AMSE formula is also investigated by the use of Monte Carlo methods and indicates that the ordinary optimal predictor performs well for various accuracy criteria. Copyright Β© 2011 John Wiley & Sons, Ltd.
π SIMILAR VOLUMES
This paper derives the best linear unbiased predictor for a one-way error component model with serial correlation. A transformation derived by Baltagi and Li (1991) is used to show how the forecast can be easily computed from the GLS estimates and residuals. This result is useful for panel data appl