The cluster robust variance estimator (CRVE) relies on the number of clusters being sufficiently large. Monte Carlo evidence suggests that the “rule of 42” is not true for unbalanced clusters. Rejection frequencies are higher for datasets with 50 clusters proportional to U.S. state populations than with 50 balanced clusters. Using critical values based on the wild cluster bootstrap performs much better. However, this procedure fails when a small number of clusters is treated. We explain why CRVE t statistics and the wild bootstrap fail in this case, study the “effective number” of clusters, and simulate placebo laws with dummy variable regressors
We study asymptotic inference based on cluster-robust variance estimators for regression models with...
Inference using difference-in-differences with clustered data requires care. Previous research has s...
Confidence intervals based on cluster-robust covariance matrices can be constructed in many w...
The cluster robust variance estimator (CRVE) relies on the number of clusters being large. A shortha...
The cluster robust variance estimator (CRVE) relies on the number of clusters being sufficiently lar...
When there are few treated clusters in a pure treatment or difference-in-differences setting, t test...
We study asymptotic inference based on cluster-robust variance estimators for regression models with...
We study a cluster-robust variance estimator (CRVE) for regression models with clustering in two dim...
We study two cluster-robust variance estimators (CRVEs) for regression models with clustering in two...
Many empirical projects involve estimation with clustered data. While esti- mation is straightforwar...
Inference based on cluster-robust standard errors or the wild cluster bootstrap is known to fail whe...
When there are few treated clusters in a pure treatment or difference-in-differences setting, t test...
Inference based on cluster-robust standard errors in linear regression models, using either the Stud...
Inference based on cluster-robust standard errors in linear regression models, using either the Stud...
Inference using difference-in-differences with clustered data requires care. Previous research has s...
We study asymptotic inference based on cluster-robust variance estimators for regression models with...
Inference using difference-in-differences with clustered data requires care. Previous research has s...
Confidence intervals based on cluster-robust covariance matrices can be constructed in many w...
The cluster robust variance estimator (CRVE) relies on the number of clusters being large. A shortha...
The cluster robust variance estimator (CRVE) relies on the number of clusters being sufficiently lar...
When there are few treated clusters in a pure treatment or difference-in-differences setting, t test...
We study asymptotic inference based on cluster-robust variance estimators for regression models with...
We study a cluster-robust variance estimator (CRVE) for regression models with clustering in two dim...
We study two cluster-robust variance estimators (CRVEs) for regression models with clustering in two...
Many empirical projects involve estimation with clustered data. While esti- mation is straightforwar...
Inference based on cluster-robust standard errors or the wild cluster bootstrap is known to fail whe...
When there are few treated clusters in a pure treatment or difference-in-differences setting, t test...
Inference based on cluster-robust standard errors in linear regression models, using either the Stud...
Inference based on cluster-robust standard errors in linear regression models, using either the Stud...
Inference using difference-in-differences with clustered data requires care. Previous research has s...
We study asymptotic inference based on cluster-robust variance estimators for regression models with...
Inference using difference-in-differences with clustered data requires care. Previous research has s...
Confidence intervals based on cluster-robust covariance matrices can be constructed in many w...