Author/Authors :
Jiazhu Pan، نويسنده , , Hui Wang and Qiwei Yao، نويسنده ,
Abstract :
For autoregressive moving average ~ARMA! models with infinite variance innovations,
quasi-likelihood-based estimators ~such as Whittle estimators! suffer from
complex asymptotic distributions depending on unknown tail indices+ This makes
statistical inference for such models difficult+ In contrast, the least absolute deviations
estimators ~LADE! are more appealing in dealing with heavy tailed processes+
In this paper, we propose a weighted least absolute deviations estimator
~WLADE! for ARMA models+ We show that the proposed WLADE is asymptotically
normal, is unbiased, and has the standard root-n convergence rate even when
the variance of innovations is infinity+ This paves the way for statistical inference
based on asymptotic normality for heavy-tailed ARMA processes+ For relatively
small samples numerical results illustrate that the WLADE with appropriate weight
is more accurate than the Whittle estimator, the quasi-maximum-likelihood estimator
~QMLE!, and the Gauss–Newton estimator when the innovation variance
is infinite and that the efficiency loss due to the use of weights in estimation is
not substantial+