Ordinary least squares estimation of an impulse-indicator coefficient is inconsistent, but its variance can be consistently estimated. Although the ratio of the inconsistent estimator to its standard error has a t-distribution, that test is inconsistent: one solution is to form an index of indicators. We provide Monte Carlo evidence that including a plethora of indicators need not distort model selection, permitting the use of many dummies in a general-to-specific framework. Although White's (1980) heteroskedasticity test is incorrectly sized in that context, we suggest an easy alteration. Finally, a possible modification to impulse "intercept corrections" is considered
In this paper we propose methods to construct confidence intervals for the bias of the two-stage lea...
When measurement error is present among the covariates of a regression model it can cause bias in th...
As the size and complexity of modern data sets grows, more and more prediction methods are developed...
Ordinary least squares estimation of an impulse-indicator coefficient is inconsistent, but its varia...
Ordinary least squares estimation of an impulse-indicator coefficient is inconsistent, but its varia...
OLS estimation of an impulse-indicator coefficient is inconsistent, but its variance can be consiste...
We consider selecting a regression model, using a variant of general-to-specific, when there are mor...
The statistical reliability of estimated VAR impulse responses is an important concern in applied wo...
The heteroscedasticity or changing variance observed in "raw" data may be the result of ra...
Preliminary version Several algorithms for indicator saturation are compared and found to have low p...
Random intercept models are linear mixed models (LMM) including error and intercept random effects. ...
Although a general unrestricted model may under-specify the data generation process, especially when...
We consider selecting a regression model, using a variant of the generalto- specific algorithm in P...
Although a general unrestricted model may under-specify the data generation process, especially when...
It is well documented that the small-sample accuracy of asymptotic and bootstrap approximations to t...
In this paper we propose methods to construct confidence intervals for the bias of the two-stage lea...
When measurement error is present among the covariates of a regression model it can cause bias in th...
As the size and complexity of modern data sets grows, more and more prediction methods are developed...
Ordinary least squares estimation of an impulse-indicator coefficient is inconsistent, but its varia...
Ordinary least squares estimation of an impulse-indicator coefficient is inconsistent, but its varia...
OLS estimation of an impulse-indicator coefficient is inconsistent, but its variance can be consiste...
We consider selecting a regression model, using a variant of general-to-specific, when there are mor...
The statistical reliability of estimated VAR impulse responses is an important concern in applied wo...
The heteroscedasticity or changing variance observed in "raw" data may be the result of ra...
Preliminary version Several algorithms for indicator saturation are compared and found to have low p...
Random intercept models are linear mixed models (LMM) including error and intercept random effects. ...
Although a general unrestricted model may under-specify the data generation process, especially when...
We consider selecting a regression model, using a variant of the generalto- specific algorithm in P...
Although a general unrestricted model may under-specify the data generation process, especially when...
It is well documented that the small-sample accuracy of asymptotic and bootstrap approximations to t...
In this paper we propose methods to construct confidence intervals for the bias of the two-stage lea...
When measurement error is present among the covariates of a regression model it can cause bias in th...
As the size and complexity of modern data sets grows, more and more prediction methods are developed...