This paper introduces a method which permits valid inference given a nite number of heterogeneous, correlated clusters. It is common in empirical analysis to use in-ference methods which assume that each unit is independent. Panel data permit this assumption to be relaxed as it is possible to estimate the correlations across clusters and isolate the independent variation in each cluster for proper inference. Clusters may be correlated for many reasons such as geographic proximity, similar institutions, com-parable industry compositions, etc. Moreover, with panel data, it is typical to include time xed effects, which mechanically induce correlations across clusters. The intro-duced inference procedure uses a Wald statistic and simulates the ...
The relationship between marginal (population-averaged) models for cluster-correlated binary data, a...
Although each statistical unit on which measurements are taken is unique typically there is not enou...
This dissertation studies the estimation and statistical inference of a few methods that are commonl...
AbstractStandard methods for the analysis of cluster-correlated count data fail to yield valid infer...
Correlation clustering aims at grouping the data set into correlation clusters such that the objects...
Abstract. This paper presents a novel way to conduct inference using dependent data in time series, ...
Suppose estimating a model on each of a small number of potentially heterogeneous clusters yields ap...
Suppose estimating a model on each of a small number of potentially heterogeneous clusters yields ap...
Thesis (Ph.D.)--University of Washington, 2020In this dissertation, we develop new methods for stati...
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. ...
This presentation studies robust inference for regression models where data are clustered, with corr...
Many methods of cluster analysis do not explicitly account for correlation between attributes. In th...
Abstract. Correlation clustering is the problem of finding a crisp par-tition of the vertices of a c...
<p>The two inferred clusters (k = 2) resulted from simulation using all 158 accessions in one and co...
The relationship between marginal (population-averaged) models for cluster-correlated binary data, a...
Although each statistical unit on which measurements are taken is unique typically there is not enou...
This dissertation studies the estimation and statistical inference of a few methods that are commonl...
AbstractStandard methods for the analysis of cluster-correlated count data fail to yield valid infer...
Correlation clustering aims at grouping the data set into correlation clusters such that the objects...
Abstract. This paper presents a novel way to conduct inference using dependent data in time series, ...
Suppose estimating a model on each of a small number of potentially heterogeneous clusters yields ap...
Suppose estimating a model on each of a small number of potentially heterogeneous clusters yields ap...
Thesis (Ph.D.)--University of Washington, 2020In this dissertation, we develop new methods for stati...
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. ...
This presentation studies robust inference for regression models where data are clustered, with corr...
Many methods of cluster analysis do not explicitly account for correlation between attributes. In th...
Abstract. Correlation clustering is the problem of finding a crisp par-tition of the vertices of a c...
<p>The two inferred clusters (k = 2) resulted from simulation using all 158 accessions in one and co...
The relationship between marginal (population-averaged) models for cluster-correlated binary data, a...
Although each statistical unit on which measurements are taken is unique typically there is not enou...
This dissertation studies the estimation and statistical inference of a few methods that are commonl...