Analysis of Financial Time Series Using Integer-Valued GARCH ModelsAnalysis of Financial Time Series Using Integer-Valued GARCH Models
- Other Titles
- Analysis of Financial Time Series Using Integer-Valued GARCH Models
- Authors
- 김희영; 김민석
- Issue Date
- 2013
- Publisher
- 한국자료분석학회
- Keywords
- Integer generalized autoregressive conditional heteroscedasticity; over- dispersion; thinning operations; quasi-maximum likelihood estimation; volatility.
- Citation
- Journal of The Korean Data Analysis Society, v.15, no.2, pp.593 - 602
- Indexed
- KCI
- Journal Title
- Journal of The Korean Data Analysis Society
- Volume
- 15
- Number
- 2
- Start Page
- 593
- End Page
- 602
- URI
- https://scholar.korea.ac.kr/handle/2021.sw.korea/105069
- ISSN
- 1229-2354
- Abstract
- There has been a considerable and growing interest in integer-valued time series data leading to a diversification of modelling approaches. Among them, we focus two recent models. The first model is the INGARCH(p,q) model proposed by Ferland et al. (2006) which is able to describe integer-valued processes with overdispersion and analogous to classical generalized autoregressive conditional heteroskedastic (GARCH) (p,q) model. And the second model is a special class of observation-driven models termed integer-valued autoregressive processes introduced independently by Al-Osh, Alzaid (1987) and McKenzie (1988), which is extended to higher orders by Du, Li (1991). The INAR(p) models use thinning operations, not scalar multiplication in AR(p) model. Therefore the implementation of ML in INAR(p) model is not ease, fortunately, Bu et al. (2008) developed a general framework for maximum likelihood (ML) analysis of higher-order integer-valued autoreg- ressive processes. In this paper, we summarize some characteristics of INGARCH(p,q) model. And we analyze real data example for Korean financial time series using the INGARCH(p,q) model and INAR(p) model.
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