This paper introduces a new confidence interval (CI) for the autoregressive parameter (AR) in an AR(1) model that allows for conditional heteroskedasticity of general form and AR parameters that are less than or equal to unity. The CI is a modification of Mikusheva’s (2007a) modification of Stock’s (1991) CI that employs the least squares estimator and a heteroskedasticity-robust variance estimator. The CI is shown to have correct asymptotic size and to be asymptotically similar (in a uniform sense). It does not require any tuning parameters. No existing procedures have these properties. Monte Carlo simulations show that the CI performs well in finite samples in terms of coverage probability and average length, for innovations with and without ...
Testing restrictions on regression coefficients in linear models often requires correcting the conve...
Autoregressive conditional heteroscedastic (ARCH) models and its extensions are widely used in model...
The aim of this paper is to present some statistical aspects of an order 1 autoregressive model with...
This paper introduces a new confidence interval (CI) for the autoregressive parameter (AR) in an AR(1...
In this paper, we propose a new method for constructing confidence intervals for the autoregressive ...
This paper proposes a GMM-based method for asymptotic confidence interval construction in stationary...
We consider robust inference for an autoregressive parameter in a stationary autoregressive model wi...
We derive a framework for asymptotically valid inference in stable vector autoregressive (VAR) mode...
In this paper, we extend the classical idea of Rank estimation of parameters from homoscedastic prob...
This paper considers a first-order autoregressive model with conditionally heteroskedastic innovation...
Testing restrictions on regression coefficients in linear models often requires correcting the conve...
This paper considers a first-order autoregressive model with conditionally heteroskedastic innovation...
We consider estimation and hypothesis testing on the coefficients of the co-integrating relations an...
Conditional heteroskedasticity is an important feature of many macroeconomic and financial time seri...
The AR-ARCH and AR-GARCH models, which allow for conditional heteroskedasticity and autoregression, ...
Testing restrictions on regression coefficients in linear models often requires correcting the conve...
Autoregressive conditional heteroscedastic (ARCH) models and its extensions are widely used in model...
The aim of this paper is to present some statistical aspects of an order 1 autoregressive model with...
This paper introduces a new confidence interval (CI) for the autoregressive parameter (AR) in an AR(1...
In this paper, we propose a new method for constructing confidence intervals for the autoregressive ...
This paper proposes a GMM-based method for asymptotic confidence interval construction in stationary...
We consider robust inference for an autoregressive parameter in a stationary autoregressive model wi...
We derive a framework for asymptotically valid inference in stable vector autoregressive (VAR) mode...
In this paper, we extend the classical idea of Rank estimation of parameters from homoscedastic prob...
This paper considers a first-order autoregressive model with conditionally heteroskedastic innovation...
Testing restrictions on regression coefficients in linear models often requires correcting the conve...
This paper considers a first-order autoregressive model with conditionally heteroskedastic innovation...
We consider estimation and hypothesis testing on the coefficients of the co-integrating relations an...
Conditional heteroskedasticity is an important feature of many macroeconomic and financial time seri...
The AR-ARCH and AR-GARCH models, which allow for conditional heteroskedasticity and autoregression, ...
Testing restrictions on regression coefficients in linear models often requires correcting the conve...
Autoregressive conditional heteroscedastic (ARCH) models and its extensions are widely used in model...
The aim of this paper is to present some statistical aspects of an order 1 autoregressive model with...