Inference for estimates of treatment effects with clustered data requires great care when treatment is assigned at the group level. This is true for both pure treatment models and difference-in-differences regressions. Even when the number of clusters is quite large, cluster-robust standard errors can be much too small if the number of treated (or control) clusters is small. Standard errors also tend to be too small when cluster sizes vary a lot, resulting in too many false positives. Bootstrap methods generally perform better than t tests, but they can also yield very misleading inferences in some cases
Not accounting for clustering in data from multiple centers might yield biased estimates and their s...
Inference using difference-in-differences with clustered data requires care. Previous research has s...
Binary outcome data with small clusters often arise in medical studies and the size of clusters migh...
We consider statistical inference for regression when data are grouped into clusters, with regressio...
Trials in which treatments induce clustering of observations in one of two treatment arms, such as w...
Abstract. Clustered treatment assignment occurs when individuals are grouped into clusters prior to ...
Background: clustering of observations is a common phenomenon in epidemiological and clinical resear...
Inference based on cluster-robust standard errors in linear regression models, using either the Stud...
Across research disciplines, cluster randomized trials (CRTs) are commonly implemented to evaluate i...
It is becoming increasingly common for epidemiologists to consider randomizing intact social units (...
Background: Cluster randomized trials (CRTs) are increasingly used to assess the effectiveness of he...
When comparing two different kinds of group therapy or two individual treatments where patients with...
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...
Analysis of clustered data from randomized trials or observational data often poses theoretical and ...
Not accounting for clustering in data from multiple centers might yield biased estimates and their s...
Inference using difference-in-differences with clustered data requires care. Previous research has s...
Binary outcome data with small clusters often arise in medical studies and the size of clusters migh...
We consider statistical inference for regression when data are grouped into clusters, with regressio...
Trials in which treatments induce clustering of observations in one of two treatment arms, such as w...
Abstract. Clustered treatment assignment occurs when individuals are grouped into clusters prior to ...
Background: clustering of observations is a common phenomenon in epidemiological and clinical resear...
Inference based on cluster-robust standard errors in linear regression models, using either the Stud...
Across research disciplines, cluster randomized trials (CRTs) are commonly implemented to evaluate i...
It is becoming increasingly common for epidemiologists to consider randomizing intact social units (...
Background: Cluster randomized trials (CRTs) are increasingly used to assess the effectiveness of he...
When comparing two different kinds of group therapy or two individual treatments where patients with...
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...
Analysis of clustered data from randomized trials or observational data often poses theoretical and ...
Not accounting for clustering in data from multiple centers might yield biased estimates and their s...
Inference using difference-in-differences with clustered data requires care. Previous research has s...
Binary outcome data with small clusters often arise in medical studies and the size of clusters migh...