PREDICTION MEAN SQUARED ERROR OF THE POISSON INAR(1) PROCESSWITH ESTIMATED PARAMETERSPREDICTION MEAN SQUARED ERROR OF THE POISSON INAR(1) PROCESSWITH ESTIMATED PARAMETERS
- Other Titles
- PREDICTION MEAN SQUARED ERROR OF THE POISSON INAR(1) PROCESSWITH ESTIMATED PARAMETERS
- Authors
- 김희영; YOUSUNG PARK
- Issue Date
- 2006
- Publisher
- 한국통계학회
- Citation
- Journal of the Korean Statistical Society, v.35, no.1, pp.37 - 47
- Indexed
- KCI
- Journal Title
- Journal of the Korean Statistical Society
- Volume
- 35
- Number
- 1
- Start Page
- 37
- End Page
- 47
- URI
- https://scholar.korea.ac.kr/handle/2021.sw.korea/125966
- ISSN
- 1226-3192
- Abstract
- Recently, as a result of the growing interest in modeling stationary pro-cesses with discrete marginal distributions, several models for integer valuedtime series have been proposed in the literature. One of these models isthe integer-valued autoregressive (INAR) models. However, when modelingwith integer-valued autoregressive processes, the distributional propertiesof forecasts have been not yet discovered due to the diculty in handlingthe Steutal Van Harn thinning operator \ "(Steutal and van Harn, 1979).In this study, we derive the mean squared error ofh-step-ahead predictionfrom a Poisson INAR(1) process, reecting the eect of the variability ofparameter estimates in the prediction mean squared error.AMS 2000 subject classications.Primary 60G10; Secondary 37M10.Keywords.Stationary process, integer valued time series, mean-squared pre-diction errors.1. IntroductionThere has been a growing research in modeling discrete time stationary pro-cesses with discrete marginal distributions. The usual linear models for timeseries, ARMA models, are suitable for modeling stationary dependent sequencesunder the Gaussian assumption. However, the Gaussian assumption is often inap-propriate for modeling counting data. Thus, motivated by the need for modelingcorrelated series of counts, several models for integer-valued time series have beenproposed in the literature.Received January 2006; accepted February 2006.1Corresponding author. Institute of Statistics, Korea University, Seoul 136-701, Korea (e-mail : starkim@korea.ac.kr)
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