The ordinary least squares (OLS) estimates in the regression model are efficient when the disturbances have mean zero, constant variance, and are uncorrelated. In problems concerning time series, it is often the case that the disturbances are correlated. Using computer simulations, the robustness of various estimators are considered, including estimated generalized least squares. It was found that if the disturbance structure is autoregressive and the dependent variable is nonstochastic and linear or quadratic, the OLS performs nearly as well as its competitors. For other forms of the dependent variable, rules of thumb are presented to guide practitioners in the choice of estimators
This paper deals with the problem of testing for the presence of autocorrelation in a system of gene...
This study compares the estimators of linear model when the least square assumptions of independence...
We are interested in the implications of a linearly autocorrelated driven noise on the asymptotic be...
It is well known that the ordinary least squares (OLS) estimates in the regression model are efficie...
In problems concerning time series, it is often the case that the distur- bances are, in fact, corre...
The effect of variance estimation of regression coefficients when disturbances are serially correlat...
The performances of five estimators of linear models with autocorrelated disturbance terms are compa...
In Seemingly Unrelated Regressions (SUR) model, disturbances are assumed to be correlated across equ...
IN A RECENT ARTICLE Robert Engle [2] explored the extent of the sin practicing econometricians commi...
The bias of Ordinary Least Squares estimators of the variance of first-order autocorrelated errors a...
In regression modeling, first-order auto correlated errors are often a problem, when the data also s...
In this study, we conduct several Monte-Carlo experiments to examine the sensitivity of the efficien...
In the classical linear regression model we assume that successive values of the disturbance term ar...
Performances of estimators of the linear model under different level of autocorrelation (ρ) are know...
When a straight line is fitted to time series data, generalized least squares (GLS) estimators of th...
This paper deals with the problem of testing for the presence of autocorrelation in a system of gene...
This study compares the estimators of linear model when the least square assumptions of independence...
We are interested in the implications of a linearly autocorrelated driven noise on the asymptotic be...
It is well known that the ordinary least squares (OLS) estimates in the regression model are efficie...
In problems concerning time series, it is often the case that the distur- bances are, in fact, corre...
The effect of variance estimation of regression coefficients when disturbances are serially correlat...
The performances of five estimators of linear models with autocorrelated disturbance terms are compa...
In Seemingly Unrelated Regressions (SUR) model, disturbances are assumed to be correlated across equ...
IN A RECENT ARTICLE Robert Engle [2] explored the extent of the sin practicing econometricians commi...
The bias of Ordinary Least Squares estimators of the variance of first-order autocorrelated errors a...
In regression modeling, first-order auto correlated errors are often a problem, when the data also s...
In this study, we conduct several Monte-Carlo experiments to examine the sensitivity of the efficien...
In the classical linear regression model we assume that successive values of the disturbance term ar...
Performances of estimators of the linear model under different level of autocorrelation (ρ) are know...
When a straight line is fitted to time series data, generalized least squares (GLS) estimators of th...
This paper deals with the problem of testing for the presence of autocorrelation in a system of gene...
This study compares the estimators of linear model when the least square assumptions of independence...
We are interested in the implications of a linearly autocorrelated driven noise on the asymptotic be...