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초록
Well-known estimation methods such as conditional least squares, quasilikelihood and maximum likelihood (ML) can be unified via a single framework of martingale estimating functions (MEFs). Asymptotic distributions of estimates for ergodic processes use constant norm (e.g. square root of the sample size) for asymptotic normality. For certain non-ergodic-type applications, however, such as explosive autoregression and super-critical branching processes, one needs a random norm in order to get normal limit distributions. In this paper, we are concerned with non-ergodic processes and investigate limit distributions for a broad class of MEFs. Asymptotic optimality (within a certain class of non-ergodic MEFs) of the ML estimate is deduced via establishing a convolution theorem using a random norm. Applications to non-ergodic autoregressive processes, generalized autoregressive conditional heteroscedastic-type processes, and super-critical branching processes are discussed. Asymptotic optimality in terms of the maximum random limiting power regarding large sample tests is briefly discussed.
키워드
- 제목
- Non-ergodic martingale estimating functions and related asymptotics
- 저자
- Hwang, S. Y.; Basawa, I. V.; Choi, M. S.; Lee, S. D.
- 발행일
- 2014-05-04
- 유형
- Article
- 저널명
- Statistics
- 권
- 48
- 호
- 3
- 페이지
- 487 ~ 507