We construct efficient estimators of the identifiable parameters in a regression model when the errors follow a stationary parametric ARCH(P) process. We do not assume a functional form for the conditional density of the errors, but do require that it be symmetric about zero. The estimators of the mean parameters are adaptive in the sense of Bickel [2]. The ARCH parameters are not jointly identifiable with the error density. We consider a reparameterization of the variance process and show that the identifiable parameters of this process are adaptively estimable
We showed how autocovariance functions can be used to estimate the ARCH(1) process corrupted by AR(I...
This paper discusses the asymptotics of two-stage least squares estimator of the parameters of ARCH ...
An issue that arises in aspplications involving the ARCH-in-Mean (ARCH-M) model is whether or not th...
We construct efficient estimators of the identifiable parameters in a regression model when the erro...
We construct efficient estimators of the identifiable parameters in a regression model when the errors...
Abstract. We consider a model Yt = σtηt in which (σt) is not independent of the noise process (ηt), ...
In this paper the class of ARCH(∞) models is generalized to the nonsta-tionary class of ARCH(∞) mode...
It is well-known that financial data sets exhibit conditional heteroskedasticity.GARCH type models a...
In this paper, we develop a complete methodology for semiparametric inference in the time-varying AR...
Abstract: In this paper, we have two asymptotic objectives: the LAN and the residual empirical proce...
Consider some ARCH() process, say ARCH(), where with a Gaussian (strong) white noise . n=500 a1=...
We consider parameter estimation for a class of ARCH(∞) models, which do not necessarily have a para...
We focus on the linear model with conditional heteroskedasticity of unknown form. "Adaptive" estimat...
A standard assumption while deriving the asymptotic distribution of the quasi maximum likelihood est...
We consider a linear model where the coefficients - intercept and slopes - are random with a law in ...
We showed how autocovariance functions can be used to estimate the ARCH(1) process corrupted by AR(I...
This paper discusses the asymptotics of two-stage least squares estimator of the parameters of ARCH ...
An issue that arises in aspplications involving the ARCH-in-Mean (ARCH-M) model is whether or not th...
We construct efficient estimators of the identifiable parameters in a regression model when the erro...
We construct efficient estimators of the identifiable parameters in a regression model when the errors...
Abstract. We consider a model Yt = σtηt in which (σt) is not independent of the noise process (ηt), ...
In this paper the class of ARCH(∞) models is generalized to the nonsta-tionary class of ARCH(∞) mode...
It is well-known that financial data sets exhibit conditional heteroskedasticity.GARCH type models a...
In this paper, we develop a complete methodology for semiparametric inference in the time-varying AR...
Abstract: In this paper, we have two asymptotic objectives: the LAN and the residual empirical proce...
Consider some ARCH() process, say ARCH(), where with a Gaussian (strong) white noise . n=500 a1=...
We consider parameter estimation for a class of ARCH(∞) models, which do not necessarily have a para...
We focus on the linear model with conditional heteroskedasticity of unknown form. "Adaptive" estimat...
A standard assumption while deriving the asymptotic distribution of the quasi maximum likelihood est...
We consider a linear model where the coefficients - intercept and slopes - are random with a law in ...
We showed how autocovariance functions can be used to estimate the ARCH(1) process corrupted by AR(I...
This paper discusses the asymptotics of two-stage least squares estimator of the parameters of ARCH ...
An issue that arises in aspplications involving the ARCH-in-Mean (ARCH-M) model is whether or not th...