When Should You Adjust Standard Errors for Clustering?

Author:

Abadie Alberto1,Athey Susan2,Imbens Guido W3,Wooldridge Jeffrey M1

Affiliation:

1. Massachusetts Institute of Technology , United States

2. Stanford University , United States

3. Michigan State University , United States

Abstract

Abstract Clustered standard errors, with clusters defined by factors such as geography, are widespread in empirical research in economics and many other disciplines. Formally, clustered standard errors adjust for the correlations induced by sampling the outcome variable from a data-generating process with unobserved cluster-level components. However, the standard econometric framework for clustering leaves important questions unanswered: (i) Why do we adjust standard errors for clustering in some ways but not others, for example, by state but not by gender, and in observational studies but not in completely randomized experiments? (ii) Is the clustered variance estimator valid if we observe a large fraction of the clusters in the population? (iii) In what settings does the choice of whether and how to cluster make a difference? We address these and other questions using a novel framework for clustered inference on average treatment effects. In addition to the common sampling component, the new framework incorporates a design component that accounts for the variability induced on the estimator by the treatment assignment mechanism. We show that, when the number of clusters in the sample is a nonnegligible fraction of the number of clusters in the population, conventional clustered standard errors can be severely inflated, and propose new variance estimators that correct for this bias.

Publisher

Oxford University Press (OUP)

Subject

Economics and Econometrics

Reference24 articles.

1. “Sampling-Based versus Design-Based Uncertainty in Regression Analysis,”;Abadie;Econometrica,2020

2. “Replication Data for: ‘When Should You Adjust Standard Errors for Clustering?’,”;Abadie,2022

3. “Practitioners Corner: Computing Robust Standard Errors for Within-Groups Estimators,”;Arellano;Oxford Bulletin of Economics and Statistics,1987

4. “How Much Should We Trust Differences-in-Differences Estimates?;Bertrand;Quarterly Journal of Economics,2004

5. “A Practitioner’s Guide to Cluster-Robust Inference,”;Cameron;Journal of Human Resources,2015

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