We propose a wild bootstrap procedure for linear regression models estimated by instrumental variables. Like other bootstrap procedures that we have proposed elsewhere, it uses efficient estimates of the reduced-form equation(s). Unlike them, it takes account of possible heteroskedasticity of unknown form. We apply this procedure to t tests, including heteroskedasticity-robust t tests, and to the Anderson-Rubin test. We provide simulation evidence that it works far better than older methods, such as the pairs bootstrap. We also show how to obtain reliable confidence intervals by inverting bootstrap tests. An empirical example illustrates the utility of these procedures
This paper studies robustness of bootstrap inference methods for instrumental variable (IV) regressi...
The finite-sample performance of bootstrap procedures is studied by simulation in a linear regressio...
The wild bootstrap was originally developed for regression models with heteroskedasticity of unknown...
We propose a wild bootstrap procedure for linear regression models estimated by instrumental variabl...
We propose a wild bootstrap procedure for linear regression models estimated by instrumental variabl...
We propose a wild bootstrap procedure for linear regression models estimated by instrumental variabl...
We propose a wild bootstrap procedure for linear regression models estimated by instrumental variabl...
We propose a wild bootstrap procedure for linear regression models estimated by instrumental variabl...
We propose a wild bootstrap procedure for linear regression models estimated by instrumental variabl...
The wild bootstrap is studied in the context of regression models with heteroskedastic disturbances....
International audienceIn regression models, appropriate bootstrap methods for inference robust to he...
International audienceIn regression models, appropriate bootstrap methods for inference robust to he...
International audienceThe wild bootstrap is studied in the context of regression models with heteros...
International audienceThe wild bootstrap is studied in the context of regression models with heteros...
International audienceThe wild bootstrap is studied in the context of regression models with heteros...
This paper studies robustness of bootstrap inference methods for instrumental variable (IV) regressi...
The finite-sample performance of bootstrap procedures is studied by simulation in a linear regressio...
The wild bootstrap was originally developed for regression models with heteroskedasticity of unknown...
We propose a wild bootstrap procedure for linear regression models estimated by instrumental variabl...
We propose a wild bootstrap procedure for linear regression models estimated by instrumental variabl...
We propose a wild bootstrap procedure for linear regression models estimated by instrumental variabl...
We propose a wild bootstrap procedure for linear regression models estimated by instrumental variabl...
We propose a wild bootstrap procedure for linear regression models estimated by instrumental variabl...
We propose a wild bootstrap procedure for linear regression models estimated by instrumental variabl...
The wild bootstrap is studied in the context of regression models with heteroskedastic disturbances....
International audienceIn regression models, appropriate bootstrap methods for inference robust to he...
International audienceIn regression models, appropriate bootstrap methods for inference robust to he...
International audienceThe wild bootstrap is studied in the context of regression models with heteros...
International audienceThe wild bootstrap is studied in the context of regression models with heteros...
International audienceThe wild bootstrap is studied in the context of regression models with heteros...
This paper studies robustness of bootstrap inference methods for instrumental variable (IV) regressi...
The finite-sample performance of bootstrap procedures is studied by simulation in a linear regressio...
The wild bootstrap was originally developed for regression models with heteroskedasticity of unknown...