We consider selecting a regression model, using a variant of general-to-specific, when there are more variables than observations, in the special case that the variables are impulse dummies (indicators) for every observation. We show that the setting is unproblematic if tackled appropriately, and obtain the finite-sample distribution of estimators of the mean and variance in a simple location-scale model under the null that no impulses matter. A Monte Carlo simulation confirms the null distribution, and shows power against an alternative of interest
The problem of how to best select variables for confounding adjustment forms one of the key challeng...
We establish that under mild conditions, testing for the individual sig-nificance of an impulse indi...
Abstract: This paper studies a general problem of making inferences for functions of two sets of par...
We consider selecting a regression model, using a variant of the generalto- specific algorithm in P...
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...
Ordinary least squares estimation of an impulse-indicator coefficient is inconsistent, but its varia...
Preliminary version Several algorithms for indicator saturation are compared and found to have low p...
We consider selecting an econometric model when there is uncertainty over both the choice of variabl...
We consider selecting an econometric model when there is uncertainty over both the choice of variabl...
We consider selecting an econometric model when there is uncertainty over both the choice of variabl...
Although a general unrestricted model may under-specify the data generation process, especially when...
Although a general unrestricted model may under-specify the data generation process, especially when...
It is argued that model selection and robust estimation should be handled jointly.Impulse indicator ...
When a model under-specifies the data generation process, model selection can improve over estimatin...
The problem of how to best select variables for confounding adjustment forms one of the key challeng...
We establish that under mild conditions, testing for the individual sig-nificance of an impulse indi...
Abstract: This paper studies a general problem of making inferences for functions of two sets of par...
We consider selecting a regression model, using a variant of the generalto- specific algorithm in P...
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...
Ordinary least squares estimation of an impulse-indicator coefficient is inconsistent, but its varia...
Preliminary version Several algorithms for indicator saturation are compared and found to have low p...
We consider selecting an econometric model when there is uncertainty over both the choice of variabl...
We consider selecting an econometric model when there is uncertainty over both the choice of variabl...
We consider selecting an econometric model when there is uncertainty over both the choice of variabl...
Although a general unrestricted model may under-specify the data generation process, especially when...
Although a general unrestricted model may under-specify the data generation process, especially when...
It is argued that model selection and robust estimation should be handled jointly.Impulse indicator ...
When a model under-specifies the data generation process, model selection can improve over estimatin...
The problem of how to best select variables for confounding adjustment forms one of the key challeng...
We establish that under mild conditions, testing for the individual sig-nificance of an impulse indi...
Abstract: This paper studies a general problem of making inferences for functions of two sets of par...