We derive the analytical expressions of bias approximations for maximum likelihood (ML) and quasi-maximum likelihood (QML) estimators for the EGARCH (1,1) parameters that enable us to correct after the bias of all estimators. The bias-correction mechanism is constructed under the specification of two methods that are analytically described. We also evaluate the residual bootstrapped estimator as a measure of performance. Monte Carlo simulations indicate that, for given sets of parameters values, the bias corrections work satisfactory for all parameters. The proposed full-step estimator performs better than the classical one and is also faster than the bootstrap. The results can be also used to formulate the approximate Edgeworth distributio...
Techniques for approximating probability distributions like the Edgeworth expansion have a long hist...
We develop order T−1 asymptotic expansions for the quasi-maximum likelihood estimator (QMLE) and a t...
We check the finite sample performance of the maximum likelihood estimators of the parameters of a m...
This paper addresses extended quasi-likelihood models where both the mean and the dispersion paramet...
EGARCH models for conditionally heteroscedastic time series have attracted a steadily increasing deg...
It is now widely recognized that the most commonly used efficient two-step GMM estimator may have la...
It is now widely recognized that the most commonly used efficient two-step GMM estimator may have la...
Along the ever increasing data size and model complexity, an important challenge frequently encounte...
Usually, the parameters of a Weibull distribution are estimated by maximum likelihood estimation. To...
We analyse the finite-sample behaviour of two second-order bias-corrected alternatives to the maximu...
The exponential GARCH (EGARCH) model introduced by Nelson (1991) is a popu- lar model for discrete t...
Nowadays, the increase in data size and model complexity has led to increasingly difficult estimatio...
One of the most popular univariate asymmetric conditional volatility models is the exponential GARCH...
This paper examines the finite sample properties of the quasi maximum likelihood (QML) esti-mators o...
We derive analytic expressions for the biases, to O(n-1), of the maximum likelihood estimators of th...
Techniques for approximating probability distributions like the Edgeworth expansion have a long hist...
We develop order T−1 asymptotic expansions for the quasi-maximum likelihood estimator (QMLE) and a t...
We check the finite sample performance of the maximum likelihood estimators of the parameters of a m...
This paper addresses extended quasi-likelihood models where both the mean and the dispersion paramet...
EGARCH models for conditionally heteroscedastic time series have attracted a steadily increasing deg...
It is now widely recognized that the most commonly used efficient two-step GMM estimator may have la...
It is now widely recognized that the most commonly used efficient two-step GMM estimator may have la...
Along the ever increasing data size and model complexity, an important challenge frequently encounte...
Usually, the parameters of a Weibull distribution are estimated by maximum likelihood estimation. To...
We analyse the finite-sample behaviour of two second-order bias-corrected alternatives to the maximu...
The exponential GARCH (EGARCH) model introduced by Nelson (1991) is a popu- lar model for discrete t...
Nowadays, the increase in data size and model complexity has led to increasingly difficult estimatio...
One of the most popular univariate asymmetric conditional volatility models is the exponential GARCH...
This paper examines the finite sample properties of the quasi maximum likelihood (QML) esti-mators o...
We derive analytic expressions for the biases, to O(n-1), of the maximum likelihood estimators of th...
Techniques for approximating probability distributions like the Edgeworth expansion have a long hist...
We develop order T−1 asymptotic expansions for the quasi-maximum likelihood estimator (QMLE) and a t...
We check the finite sample performance of the maximum likelihood estimators of the parameters of a m...