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Main Authors: Bicalho, Clara, Bouyamourn, Adam, Dunning, Thad
Format: Preprint
Published: 2022
Subjects:
Online Access:https://arxiv.org/abs/2205.10478
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author Bicalho, Clara
Bouyamourn, Adam
Dunning, Thad
author_facet Bicalho, Clara
Bouyamourn, Adam
Dunning, Thad
contents Scholars frequently use covariate balance tests to test the validity of natural experiments and related designs. Unfortunately, when measured covariates are unrelated to potential outcomes, balance is uninformative about key identification conditions. We show that balance tests can then lead to erroneous conclusions. To build stronger tests, researchers should identify covariates that are jointly predictive of potential outcomes; formally measure and report covariate prognosis; and prioritize the most individually informative variables in tests. Building on prior research on ``prognostic scores," we develop bootstrap balance tests that upweight covariates associated with the outcome. We adapt this approach for regression-discontinuity designs and use simulations to compare weighting methods based on linear regression and more flexible methods, including machine learning. The results show how prognosis weighting can avoid both false negatives and false positives. To illustrate key points, we study empirical examples from a sample of published studies, including an important debate over close elections.
format Preprint
id arxiv_https___arxiv_org_abs_2205_10478
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle The Power of Prognosis: Improving Covariate Balance Tests with Outcome Information
Bicalho, Clara
Bouyamourn, Adam
Dunning, Thad
Methodology
Econometrics
62P25
Scholars frequently use covariate balance tests to test the validity of natural experiments and related designs. Unfortunately, when measured covariates are unrelated to potential outcomes, balance is uninformative about key identification conditions. We show that balance tests can then lead to erroneous conclusions. To build stronger tests, researchers should identify covariates that are jointly predictive of potential outcomes; formally measure and report covariate prognosis; and prioritize the most individually informative variables in tests. Building on prior research on ``prognostic scores," we develop bootstrap balance tests that upweight covariates associated with the outcome. We adapt this approach for regression-discontinuity designs and use simulations to compare weighting methods based on linear regression and more flexible methods, including machine learning. The results show how prognosis weighting can avoid both false negatives and false positives. To illustrate key points, we study empirical examples from a sample of published studies, including an important debate over close elections.
title The Power of Prognosis: Improving Covariate Balance Tests with Outcome Information
topic Methodology
Econometrics
62P25
url https://arxiv.org/abs/2205.10478