Omitted variables in regression analysis can lead to the erroneous conclusion that autocorrelation or heteroscedasticity is present. The common response is to use the suggested GLS procedure, even if it is suspected that the error is a non-zero disturbance mean. The question addressed here is whether one is better off with the GLS or with the OLS estimator when the omitted portion of the regression cannot be incorporated into the regression. Using a loss function this paper relates the seriousness of OLS and GLS loss to identifiable parameters. With consistent estimators of these parameters the researcher can choose between OLS and GLS.Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/26665/1/0000209.pd
The Ordinary Least Squares (OLS) method is the most widely used method to estimate the parameters o...
In regression modeling, first-order auto correlated errors are often a problem, when the data also s...
Omitted variable bias (OVB) of OLS estimators is a serious and ubiquitous problem in social science ...
Omitted variables in regression analysis can lead to the erroneous conclusion that autocorrelation o...
The main cause of autocorrelation is omitted variables from the model. When an important independent...
We present data, both real and simulated, that show generalized least squares (GLS) estimation, inte...
In this paper, I discuss three issues related to bias of OLS estimators in a general multivariate s...
When some variables to be used in a regression analysis contain measurement error, the OLS estimator...
The ordinary least squares (OLS) estimates in the regression model are efficient when the disturbanc...
It is well known that the ordinary least squares (OLS) estimates in the regression model are efficie...
IN A RECENT ARTICLE Robert Engle [2] explored the extent of the sin practicing econometricians commi...
Cuando en un modelo de regresión existe un error de especificación debido a una variable excluida, l...
The practical problem is not why specification errors are made but how to detect them. There are nu...
The problem of specification bias arising out of the omission of relevant variables in econometric r...
Measurement error biases OLS results. When the measurement error variance in absolute or relative (r...
The Ordinary Least Squares (OLS) method is the most widely used method to estimate the parameters o...
In regression modeling, first-order auto correlated errors are often a problem, when the data also s...
Omitted variable bias (OVB) of OLS estimators is a serious and ubiquitous problem in social science ...
Omitted variables in regression analysis can lead to the erroneous conclusion that autocorrelation o...
The main cause of autocorrelation is omitted variables from the model. When an important independent...
We present data, both real and simulated, that show generalized least squares (GLS) estimation, inte...
In this paper, I discuss three issues related to bias of OLS estimators in a general multivariate s...
When some variables to be used in a regression analysis contain measurement error, the OLS estimator...
The ordinary least squares (OLS) estimates in the regression model are efficient when the disturbanc...
It is well known that the ordinary least squares (OLS) estimates in the regression model are efficie...
IN A RECENT ARTICLE Robert Engle [2] explored the extent of the sin practicing econometricians commi...
Cuando en un modelo de regresión existe un error de especificación debido a una variable excluida, l...
The practical problem is not why specification errors are made but how to detect them. There are nu...
The problem of specification bias arising out of the omission of relevant variables in econometric r...
Measurement error biases OLS results. When the measurement error variance in absolute or relative (r...
The Ordinary Least Squares (OLS) method is the most widely used method to estimate the parameters o...
In regression modeling, first-order auto correlated errors are often a problem, when the data also s...
Omitted variable bias (OVB) of OLS estimators is a serious and ubiquitous problem in social science ...