We analyze the properties of various methods for bias-correcting parameter estimates in both stationary and non-stationary vector autoregressive models. First, we show that two analytical bias formulas from the existing literature are in fact identical. Next, based on a detailed simulation study, we show that when the model is stationary this simple bias formula compares very favorably to bootstrap bias-correction, both in terms of bias and mean squared error. In non-stationary models, the analytical bias formula performs noticeably worse than bootstrapping. Both methods yield a notable improvement over ordinary least squares. We pay special attention to the risk of pushing an otherwise stationary model into the non-stationary region of the...
The maximum likelihood estimator of the adjustment coefficient in a cointegrated vector autoregressi...
Along the ever increasing data size and model complexity, an important challenge frequently encounte...
A bootstrap bias-correction method is applied to statistical inference in the regression model with ...
We derive bias-corrected least-squares estimators of panel vector autoregressions with fixed effects...
A symbolic method which can be used to obtain the asymptotic bias and variance coefficients to order...
The purpose of this thesis was to evaluate a method for reducing the bias of estimation for autocova...
In this paper we work with multivariate time series that follow a Dynamic Factor Model. In particula...
This paper compares the behaviour of a bias-corrected estimator assuming strongly exogenous regresso...
This paper compares the first-order bias approximation for the autoregressive (AR) coefficients in s...
Nowadays, the increase in data size and model complexity has led to increasingly difficult estimatio...
We investigate the finite sample behaviour of the ordinary least squares (OLS) estimator in vector a...
Vector autoregressions (VARs) are important tools in time series analysis. However, relatively littl...
This paper is concerned with the estimation of the autoregressive parameter of dynamic panel data mo...
It is well-known that maximum likelihood (ML) estimation of the autoregres-sive parameter of a dynam...
A computationally simple bias correction for linear dynamic panel data models is proposed and its as...
The maximum likelihood estimator of the adjustment coefficient in a cointegrated vector autoregressi...
Along the ever increasing data size and model complexity, an important challenge frequently encounte...
A bootstrap bias-correction method is applied to statistical inference in the regression model with ...
We derive bias-corrected least-squares estimators of panel vector autoregressions with fixed effects...
A symbolic method which can be used to obtain the asymptotic bias and variance coefficients to order...
The purpose of this thesis was to evaluate a method for reducing the bias of estimation for autocova...
In this paper we work with multivariate time series that follow a Dynamic Factor Model. In particula...
This paper compares the behaviour of a bias-corrected estimator assuming strongly exogenous regresso...
This paper compares the first-order bias approximation for the autoregressive (AR) coefficients in s...
Nowadays, the increase in data size and model complexity has led to increasingly difficult estimatio...
We investigate the finite sample behaviour of the ordinary least squares (OLS) estimator in vector a...
Vector autoregressions (VARs) are important tools in time series analysis. However, relatively littl...
This paper is concerned with the estimation of the autoregressive parameter of dynamic panel data mo...
It is well-known that maximum likelihood (ML) estimation of the autoregres-sive parameter of a dynam...
A computationally simple bias correction for linear dynamic panel data models is proposed and its as...
The maximum likelihood estimator of the adjustment coefficient in a cointegrated vector autoregressi...
Along the ever increasing data size and model complexity, an important challenge frequently encounte...
A bootstrap bias-correction method is applied to statistical inference in the regression model with ...