Consider testing the null hypothesis that a single structural equation has specified coefficients. The alternative hypothesis is that the relevant part of the reduced form matrix has proper rank, that is, that the equation is identified. The usual linear model with normal disturbances is invariant with respect to linear transformations of the endogenous and of the exogenous variables. When the disturbance covariance matrix is known, it can be set to the identity, and the invariance of the endogenous variables is with respect to orthogonal transformations. The likelihood ratio test is invariant with respect to these transformations and is the best invariant test. Furthermore it is admissible in the class of all tests. Any other test has lowe...
AbstractIn reduced-rank regression, a matrix of expectations is modeled as a lower rank matrix. In f...
Significance testing is one of the main objectives of statistics. The Neyman-Pearson lemma provides...
The estimator of the coefficient covariance matrix proposed in White (1982)can be used to robustify ...
This thesis considers the problem of testing linear restrictions on coefficients of a single equatio...
We study several tests for the coefficient of the single right-hand-side endogenous variable in a li...
AbstractThe null hypothesis that the error vectors in a multivariate linear model are independent is...
This paper considers a linear panel data model with reduced rank regressors and interactive fixed e...
This paper considers tests of the parameter on endogenous variables in an instrumental variables reg...
There is a useful but not widely known framework for jointly implementing Durbin-Wu-Hausman exogenei...
AbstractThe classical problem of testing the equality of the covariance matrices from k⩾2 p-dimensio...
This paper considers a linear panel data model with reduced rank regressors and interactive fixed ef...
This paper considers tests of the parameter on an endogenous variable in an instru-mental variables ...
When structural equation modeling (SEM) analyses are conducted, significance tests for all important...
Significance testing is one of the main objectives of statistics. The Neyman-Pearson lemma provides ...
We study several tests for the coefficient of the single right-hand-side endogenous variable in a li...
AbstractIn reduced-rank regression, a matrix of expectations is modeled as a lower rank matrix. In f...
Significance testing is one of the main objectives of statistics. The Neyman-Pearson lemma provides...
The estimator of the coefficient covariance matrix proposed in White (1982)can be used to robustify ...
This thesis considers the problem of testing linear restrictions on coefficients of a single equatio...
We study several tests for the coefficient of the single right-hand-side endogenous variable in a li...
AbstractThe null hypothesis that the error vectors in a multivariate linear model are independent is...
This paper considers a linear panel data model with reduced rank regressors and interactive fixed e...
This paper considers tests of the parameter on endogenous variables in an instrumental variables reg...
There is a useful but not widely known framework for jointly implementing Durbin-Wu-Hausman exogenei...
AbstractThe classical problem of testing the equality of the covariance matrices from k⩾2 p-dimensio...
This paper considers a linear panel data model with reduced rank regressors and interactive fixed ef...
This paper considers tests of the parameter on an endogenous variable in an instru-mental variables ...
When structural equation modeling (SEM) analyses are conducted, significance tests for all important...
Significance testing is one of the main objectives of statistics. The Neyman-Pearson lemma provides ...
We study several tests for the coefficient of the single right-hand-side endogenous variable in a li...
AbstractIn reduced-rank regression, a matrix of expectations is modeled as a lower rank matrix. In f...
Significance testing is one of the main objectives of statistics. The Neyman-Pearson lemma provides...
The estimator of the coefficient covariance matrix proposed in White (1982)can be used to robustify ...