This paper focuses on the practice of serial correlation correcting of the Linear Regression Model (LRM) by modeling the error. Simple Monte Carlo experiments are used to demonstrate the following points regarding this practice. First, the common factor restrictions implicitly imposed on the temporal structure of yt and xt appear to be completely unreasonable for any real world application. Second, when one compares the Autocorrelation-Corrected LRM (ACLRM) model estimates with estimates from the (unrestricted) Dynamic Linear Regression Model (DLRM) encompassing the ACLRM there is no significant gain in efficiency! Third, as expected, when the common factor restrictions do not hold the LRM model gives poor estimates of the true parameters a...
It is well known that the Durbin–Watson and several other tests for first-order autocorrelation have...
The efficiency of estimation procedures and the validity of testing procedures in simple and multipl...
A strategy for di scriminating between autocorrelation and misspecification is proposed as an alte r...
This paper focuses on the practice of serial correlation correcting of the Linear Regression Model (...
Though the practice of ‘correcting for residual autocorrelation’ has long been critized, it is still...
In the classical linear regression model we assume that successive values of the disturbance term ar...
First published online: 07 April 2000Though the practice of 'correcting for residual autocorrelation...
In regression analysis, autocorrelation of the error terms violates the ordinary least squares assum...
This paper demonstrates that linear regression models with an AR(1) error structure implicitly assum...
This paper demonstrates that linear regression models with an AR(1) error structure implicitly assum...
This paper demonstrates that linear regression models with an AR(1) error structure implicitly assum...
Positive autocorrelation can inflate type I error in tests for significance of the linear regression...
Positive autocorrelation can inflate type I error in tests for significance of the linear regression...
Positive autocorrelation can inflate type I error in tests for significance of the linear regression...
We consider the power functions of five popular tests for AR(1) errors in a linear regression model ...
It is well known that the Durbin–Watson and several other tests for first-order autocorrelation have...
The efficiency of estimation procedures and the validity of testing procedures in simple and multipl...
A strategy for di scriminating between autocorrelation and misspecification is proposed as an alte r...
This paper focuses on the practice of serial correlation correcting of the Linear Regression Model (...
Though the practice of ‘correcting for residual autocorrelation’ has long been critized, it is still...
In the classical linear regression model we assume that successive values of the disturbance term ar...
First published online: 07 April 2000Though the practice of 'correcting for residual autocorrelation...
In regression analysis, autocorrelation of the error terms violates the ordinary least squares assum...
This paper demonstrates that linear regression models with an AR(1) error structure implicitly assum...
This paper demonstrates that linear regression models with an AR(1) error structure implicitly assum...
This paper demonstrates that linear regression models with an AR(1) error structure implicitly assum...
Positive autocorrelation can inflate type I error in tests for significance of the linear regression...
Positive autocorrelation can inflate type I error in tests for significance of the linear regression...
Positive autocorrelation can inflate type I error in tests for significance of the linear regression...
We consider the power functions of five popular tests for AR(1) errors in a linear regression model ...
It is well known that the Durbin–Watson and several other tests for first-order autocorrelation have...
The efficiency of estimation procedures and the validity of testing procedures in simple and multipl...
A strategy for di scriminating between autocorrelation and misspecification is proposed as an alte r...