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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
김희영YOUSUNG 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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