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Replication Data for: Practical and Effective Approaches to Dealing with Clustered Data

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DataONE2018-04-04 更新2024-06-25 收录
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Cluster-robust standard errors (as implemented by the eponymous cluster option in Stata) can produce misleading inferences when the number of clusters G is small, even if the model is consistent and there are many observations in each cluster. Nevertheless, political scientists commonly employ this method in data sets with few clusters. The contributions of this paper are: (a) developing new and easy-to-use Stata and R packages that implement alternative uncertainty measures robust to small G, and (b) explaining and providing evidence for the advantages of these alternatives, especially cluster-adjusted t-statistics based on Ibragimov et al. (2010). To illustrate these advantages, we reanalyze recent work by Grosser et al. (2013), Lacina (2014), and Hainmueller et al. (2015) whose results are based on cluster-robust standard errors.
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2023-11-21
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