• Media type: Report; E-Book
  • Title: Leverage, influence, and the jackknife in clustered regression models: Reliable inference using summclust
  • Contributor: MacKinnon, James G. [Author]; Nielsen, Morten Ørregaard [Author]; Webb, Matthew D. [Author]
  • Published: Kingston (Ontario): Queen's University, Department of Economics, 2022
  • Language: English
  • Keywords: C12 ; C23 ; C10 ; C87 ; highleverageclusters ; robust inference ; C21 ; grouped data ; jackknife ; clustered data ; influential clusters ; partial leverage ; cluster-robust variance estimator
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  • Description: Cluster-robust inference is widely used in modern empirical work in economics and many other disciplines. The key unit of observation is the cluster. We propose measures of "high-leverage" clusters and "influential" clusters for linear regression models. The measures of leverage and partial leverage, and functions of them, can be used as diagnostic tools to identify datasets and regression designs in which cluster-robust inference is likely to be challenging. The measures of influence can provide valuable information about how the results depend on the data in the various clusters. We also show how to calculate two jackknife variance matrix estimators, CV3 and CV3J, as a byproduct of our other computations. All these quantities, including the jackknife variance estimators, are computed in a new Stata package called summclust that summarizes the cluster structure of a dataset.
  • Access State: Open Access