A great deal of use has undoubtedly been made of least squares regression methods in circumstances in which they are known to be inapplicable. In particular, they have often been employed for the analysis of time series and similar data in which successive observa-tions are serially correlated. The resulting complications are well known and have recently been studied from the standpoint of the econometrician by Cochrane & Orcutt (1949). A basic assumption underlying the application of the least squares method is that the error terms in the regression model are independent. When this assumption—among others—is satisfied the procedure is valid whether or not the observations themselves are serially correlated. The problem of testing the e...
Because serial correlation in linear panel-data models biases the standard errors and causes the res...
AbstractThis paper presents nonparametric tests of independence that can be used to test the indepen...
UnrestrictedOrdinary least squares is one of the most popular approaches for fitting regression mode...
The robustness and efficiency of OLS statistical inference is assessed in cases where the disturbanc...
A test for serial independence of regression errors is proposed that is consistent in the direction ...
A test for serial independence of regression errors, consistent in the direction of first order alte...
A test for serial independence of regression errors is proposed that it consisten in the direction o...
International audienceWe are interested in the implications of a linearly autocorrelated driven nois...
When estimating regression models using the least squares method, one of its prerequisites is the la...
Testing the presence of serial correlation in the error terms in fixed effects regression models is ...
AbstractMultivariate autoregressive models with exogenous variables (VARX) are often used in econome...
This paper derives a simple lagrange multiplier (LM) test which jointly tests the presence of random...
In this article, we propose various tests for serial correlation in fixed-effects panel data regress...
The Durbin-Watson test on autocorrelation is based on the least squares residual vector. It is well ...
A new family of statistics is proposed to test for the presence of serial correlationin linear regre...
Because serial correlation in linear panel-data models biases the standard errors and causes the res...
AbstractThis paper presents nonparametric tests of independence that can be used to test the indepen...
UnrestrictedOrdinary least squares is one of the most popular approaches for fitting regression mode...
The robustness and efficiency of OLS statistical inference is assessed in cases where the disturbanc...
A test for serial independence of regression errors is proposed that is consistent in the direction ...
A test for serial independence of regression errors, consistent in the direction of first order alte...
A test for serial independence of regression errors is proposed that it consisten in the direction o...
International audienceWe are interested in the implications of a linearly autocorrelated driven nois...
When estimating regression models using the least squares method, one of its prerequisites is the la...
Testing the presence of serial correlation in the error terms in fixed effects regression models is ...
AbstractMultivariate autoregressive models with exogenous variables (VARX) are often used in econome...
This paper derives a simple lagrange multiplier (LM) test which jointly tests the presence of random...
In this article, we propose various tests for serial correlation in fixed-effects panel data regress...
The Durbin-Watson test on autocorrelation is based on the least squares residual vector. It is well ...
A new family of statistics is proposed to test for the presence of serial correlationin linear regre...
Because serial correlation in linear panel-data models biases the standard errors and causes the res...
AbstractThis paper presents nonparametric tests of independence that can be used to test the indepen...
UnrestrictedOrdinary least squares is one of the most popular approaches for fitting regression mode...