Title of article :
Asymptotics of empirical processes of long memory moving averages with infinite variance
Author/Authors :
Koul، نويسنده , , Hira L. and Surgailis، نويسنده , , Donatas، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2001
Abstract :
This paper obtains a uniform reduction principle for the empirical process of a stationary moving average time series {Xt} with long memory and independent and identically distributed innovations belonging to the domain of attraction of symmetric α-stable laws, 1<α<2. As a consequence, an appropriately standardized empirical process is shown to converge weakly in the uniform-topology to a degenerate process of the form f Z, where Z is a standard symmetric α-stable random variable and f is the marginal density of the underlying process. A similar result is obtained for a class of weighted empirical processes. We also show, for a large class of bounded functions h, that the limit law of (normalized) sums ∑s=1nh(Xs) is symmetric α-stable. An application of these results to linear regression models with moving average errors of the above type yields that a large class of M-estimators of regression parameters are asymptotically equivalent to the least-squares estimator and α-stable. This paper thus extends various well-known results of Dehling–Taqqu and Koul–Mukherjee from finite variance long memory models to infinite variance models of the above type.
Keywords :
M-estimators , Uniform reduction principle , Non-random designs , Unbounded spectral density
Journal title :
Stochastic Processes and their Applications
Journal title :
Stochastic Processes and their Applications