Suppose estimating a model on each of a small number of potentially heterogeneous clusters yields approximately independent, unbiased, and Gaussian parameter estimators. We make two contributions in this setup. First, we show how to compare a scalar parameter of interest between treatment and control units using a two-sample t-statistic, extending previous results for the one-sample t-statistic. Second, we develop a test for the appropriate level of clustering; it tests the null hypothesis that clustered standard errors from a much finer partition are correct. We illustrate the approach by revisiting empirical studies involving clustered, time series, and spatially correlated data
Thesis (Ph.D.)--University of Washington, 2020In this dissertation, we develop new methods for stati...
Inference for estimates of treatment effects with clustered data requires great care when treatment ...
Inference based on cluster-robust standard errors in linear regression models, using either the Stud...
Suppose estimating a model on each of a small number of potentially heterogeneous clusters yields ap...
This paper introduces a method which permits valid inference given a nite number of heterogeneous, c...
We consider statistical inference for regression when data are grouped into clusters, with regressio...
There are many algorithms to cluster sample data points based on nearness or a similar-ity measure. ...
Although each statistical unit on which measurements are taken is unique, typically there is not eno...
I Dependence and heterogeneity affects inference on parameters I Standard practice typically involve...
This presentation studies robust inference for regression models where data are clustered, with corr...
There are two notoriously hard problems in cluster analysis, estimating the number of clusters, and ...
Clustering is part of unsupervised analysis methods that consist in grouping samples into homogeneou...
Much work has been published on methods for assessing the probable number of clusters or structures ...
Abstract. This paper presents a novel way to conduct inference using dependent data in time series, ...
Inference based on cluster-robust standard errors in linear regression models, using either the Stud...
Thesis (Ph.D.)--University of Washington, 2020In this dissertation, we develop new methods for stati...
Inference for estimates of treatment effects with clustered data requires great care when treatment ...
Inference based on cluster-robust standard errors in linear regression models, using either the Stud...
Suppose estimating a model on each of a small number of potentially heterogeneous clusters yields ap...
This paper introduces a method which permits valid inference given a nite number of heterogeneous, c...
We consider statistical inference for regression when data are grouped into clusters, with regressio...
There are many algorithms to cluster sample data points based on nearness or a similar-ity measure. ...
Although each statistical unit on which measurements are taken is unique, typically there is not eno...
I Dependence and heterogeneity affects inference on parameters I Standard practice typically involve...
This presentation studies robust inference for regression models where data are clustered, with corr...
There are two notoriously hard problems in cluster analysis, estimating the number of clusters, and ...
Clustering is part of unsupervised analysis methods that consist in grouping samples into homogeneou...
Much work has been published on methods for assessing the probable number of clusters or structures ...
Abstract. This paper presents a novel way to conduct inference using dependent data in time series, ...
Inference based on cluster-robust standard errors in linear regression models, using either the Stud...
Thesis (Ph.D.)--University of Washington, 2020In this dissertation, we develop new methods for stati...
Inference for estimates of treatment effects with clustered data requires great care when treatment ...
Inference based on cluster-robust standard errors in linear regression models, using either the Stud...