Recent Review of Nonlinear Conditional Mean and Variance Modeling in Time Series
  • 황선영
  • 이진애
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초록

In this paper we review recent developments in nonlinear time series modeling on both conditional mean and conditional variance. Traditional linear model in conditional mean is referred to as ARMA(autoregressive moving average) process investigated by Box and Jenkins(1976). Nonlinear mean models such as threshold, exponential and random coefficient models are reviewed and their characteristics are explained. In terms of conditional variances, ARCH(autoregressive conditional heteroscedasticity) class is considered as typical linear models. As nonlinear variants of ARCH, diverse nonlinear models appearing in recent literature including threshold ARCH, beta-ARCH and Box-Cox ARCH models are remarked. Also, a class of unified nonlinear models are considered and parameter estimation for that class is briefly discussed.

키워드

Box-CoxNonlinear ARNonlinear ARCHThreshold modelBox-CoxNonlinear ARNonlinear ARCHThreshold model
제목
Recent Review of Nonlinear Conditional Mean and Variance Modeling in Time Series
저자
황선영이진애
발행일
2004-12
저널명
한국데이터정보과학회지
15
4
페이지
783 ~ 791