Global self-weighted and local quasi-maximum exponential likelihood estimators for ARMA-GARCH/IGARCH models
This paper investigates the asymptotic theory of the quasi-maximum exponential likelihood estimators (QMELE) for ARMA–GARCH models. Under only a fractional moment condition, the strong consistency and the asymptotic normality of the global self-weighted QMELE are obtained. Based on this self-weighted QMELE, the local QMELE is showed to be asymptotically normal for the ARMA model with GARCH (finite variance) and IGARCH errors. A formal comparison of two estimators is given for some cases. A simulation study is carried out to assess the performance of these estimators, and a real example on the world crude oil price is given.
Year of publication: |
2013-11-17
|
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Authors: | Zhu, Ke ; Ling, Shiqing |
Institutions: | Volkswirtschaftliche Fakultät, Ludwig-Maximilians-Universität München |
Subject: | ARMA–GARCH/IGARCH model | asymptotic normality | global selfweighted/local quasi-maximum exponential likelihood estimator | strong consistency |
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