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REGRESSION DISCONTINUITY DESIGNS USING COVARIATES
by
Farrell, Max H.
, Cattaneo, Matias D.
, Titiunik, Rocío
, Calonico, Sebastian
in
Bias
/ Discontinuity
/ Economic models
/ Errors
/ Estimation
/ Inference
/ Simulation
2019
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REGRESSION DISCONTINUITY DESIGNS USING COVARIATES
by
Farrell, Max H.
, Cattaneo, Matias D.
, Titiunik, Rocío
, Calonico, Sebastian
in
Bias
/ Discontinuity
/ Economic models
/ Errors
/ Estimation
/ Inference
/ Simulation
2019
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Journal Article
REGRESSION DISCONTINUITY DESIGNS USING COVARIATES
2019
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Overview
We study regression discontinuity designs when covariates are included in the estimation. We examine local polynomial estimators that include discrete or continuous covariates in an additive separable way, but without imposing any parametric restrictions on the underlying population regression functions. We recommend a covariate-adjustment approach that retains consistency under intuitive conditions and characterize the potential for estimation and inference improvements. We also present new covariateadjusted mean-squared error expansions and robust bias-corrected inference procedures, with heteroskedasticity-consistent and cluster-robust standard errors. We provide an empirical illustration and an extensive simulation study. All methods are implemented in R and Stata software packages.
Publisher
MIT Press,MIT Press Journals, The
Subject
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