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MATEMATIČKI VESNIK
Semi parametric estimation of extremal index for ARMAX process with infinite variance
Hakim Ouadjed and Mami Tawfiq Fawzi

Abstract

We consider estimating the extremal index of a maximum autoregressive process of order one under the assumption that the distribution of the innovations has a regularly varying tail at infinity. We establish the asymptotic normality of the new estimator using the extreme quantile approach, and its performance is illustrated in a simulation study. Moreover, we compare, in terms of bias and mean squared error, our estimator with the estimator of Ferro and Segers [Inference for clusters of extreme values, J. Royal Stat. Soc., Ser. B, {65} (2003), 545--556] and Olmo [A new family of consistent and asymptotically-normal estimators for the extremal index, {Econometrics}, 3 (2015), 633--653].

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Keywords: extreme value theory; max autoregressive processes; tail index estimation

MSC: 60G70, 62G32

Pages:  130$-$139     

Volume  68 ,  Issue  2 ,  2016