Asymptotics for moving average processes with dependent innovations
Let Xt be a moving average process defined by Xt=[summation operator]k=0[infinity][psi]k[var epsilon]t-k, t=1,2,... , where the innovation {[var epsilon]k} is a centered sequence of random variables and {[psi]k} is a sequence of real numbers. Under conditions on {[psi]k} which entail that {Xt} is either a long memory process or a linear process, we study asymptotics of the partial sum process [summation operator]t=0[ns]Xt. For a long memory process with innovations forming a martingale difference sequence, the functional limit theorems of [summation operator]t=0[ns]Xt (properly normalized) are derived. For a linear process, we give sufficient conditions so that [summation operator]t=1[ns]Xt (properly normalized) converges weakly to a standard Brownian motion if the corresponding [summation operator]k=1[ns][var epsilon]k is true. The applications to fractional processes and other mixing innovations are also discussed.
Year of publication: |
2001
|
---|---|
Authors: | Wang, Qiying ; Lin, Yan-Xia ; Gulati, Chandra M. |
Published in: |
Statistics & Probability Letters. - Elsevier, ISSN 0167-7152. - Vol. 54.2001, 4, p. 347-356
|
Publisher: |
Elsevier |
Keywords: | Functional limit theorem Linear process Long memory process Fractionally integrated process Moving average process |
Saved in:
Saved in favorites
Similar items by person
-
The invariance principle for linear processes with applications
Wang, Qiying, (2002)
-
Asymptotics for general fractionally integrated processes with applications to unit root tests
Wang, Qiying, (2003)
-
THE INVARIANCE PRINCIPLE FOR LINEAR PROCESSES WITH APPLICATIONS
Wang, Qiying, (2002)
- More ...