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Diagnostic checks for integer-valued autoregressive models using expected residuals

Authors
Park, YousungKim, Hee-Young
Issue Date
11월-2012
Publisher
SPRINGER
Keywords
Integer-valued AR(p); Residuals; Probability integral transformation; Over-dispersion; Thinning parameter
Citation
STATISTICAL PAPERS, v.53, no.4, pp.951 - 970
Indexed
SCIE
SCOPUS
Journal Title
STATISTICAL PAPERS
Volume
53
Number
4
Start Page
951
End Page
970
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/107007
DOI
10.1007/s00362-011-0399-9
ISSN
0932-5026
Abstract
Integer-valued time series models make use of thinning operators for coherency in the nature of count data. However, the thinning operators make residuals unobservable and are the main difficulty in developing diagnostic tools for autocorrelated count data. In this regard, we introduce a new residual, which takes the form of predictive distribution functions, to assess probabilistic forecasts, and this new residual is supplemented by a modified usual residuals. Under integer-valued autoregressive (INAR) models, the properties of these two residuals are investigated and used to evaluate the predictive performance and model adequacy of the INAR models. We compare our residuals with the existing residuals through simulation studies and apply our method to select an appropriate INAR model for an over-dispersed real data.
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College of Political Science & Economics > Department of Statistics > 1. Journal Articles
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Kim, Hee Young
공공정책대학 (빅데이터사이언스학부)
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