On estimation and prediction procedures for ar(1) models with power transformation
โ Scribed by J. C. Lee; S. L. Tsao
- Publisher
- John Wiley and Sons
- Year
- 1993
- Tongue
- English
- Weight
- 664 KB
- Volume
- 12
- Category
- Article
- ISSN
- 0277-6693
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โฆ Synopsis
The power transformation of Box and Cox (1964) has been shown to be quite useful in short-term forecasting for the linear regression model with AR(1) dependence structure (see, for example, Lee and Lu, 1987, 1989). It is crucial to have good estimates of the power transformation and serial. correlation parameters, because they form the basis for estimating other parameters and predicting future observations. The prediction of future observations is the main focus of this paper. We propose to estimate these two parameters by minimizing the mean squared prediction errors. These estimates and the corresponding predictions compare favourably, via revs and simulated data, with those obtained by the maximum likelihood method. Similar results are also demonstrated in the repeated measurements setting. KEY WORDS AR( 1) dependence Box-Cox transformation Maximum likelihood Minimum prediction errors Simulations Technology penetration * Research supported in part by NSC grant 82-208-M009-054
๐ SIMILAR VOLUMES
This paper is concerned with the determination of simultaneous conยฎdence regions for some types of time series models. We derive recursive formulas which allow the determination of the probability for an AR(1) stationary process based on exponential inputs to lie under any sequence of constants duri