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Auteurs principaux: Gutknecht, Daniel, Liu, Cenchen
Format: Preprint
Publié: 2024
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Accès en ligne:https://arxiv.org/abs/2401.00618
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author Gutknecht, Daniel
Liu, Cenchen
author_facet Gutknecht, Daniel
Liu, Cenchen
contents We develop a Difference-in-Differences framework for discrete, ordered outcomes subject to underreporting. Such outcomes commonly arise in self-reported surveys on socially undesirable or stigmatized behaviors, where respondents may conceal their true behavior. For a discrete Changes-in-Changes model that is shown to admit an equivalent threshold-crossing representation, we derive nonparametric bounds for the counterfactual and factual outcome distributions as well as for the associated quantile treatment effects when outcomes are underreported. These bounds are shown to be sharp uniformly across outcome levels under additional support conditions, and we propose suitable estimation and bootstrap inference procedures. In an extension, we also consider a semiparametric underreporting model that allows to point identify and estimate distributional treatment effects. As an application, we investigate the impact of recreational marijuana legalization on the consumption behavior of 8th-grade students in several U.S. states.
format Preprint
id arxiv_https___arxiv_org_abs_2401_00618
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Changes-in-Changes for Ordered Choice Models with Underreporting
Gutknecht, Daniel
Liu, Cenchen
Econometrics
We develop a Difference-in-Differences framework for discrete, ordered outcomes subject to underreporting. Such outcomes commonly arise in self-reported surveys on socially undesirable or stigmatized behaviors, where respondents may conceal their true behavior. For a discrete Changes-in-Changes model that is shown to admit an equivalent threshold-crossing representation, we derive nonparametric bounds for the counterfactual and factual outcome distributions as well as for the associated quantile treatment effects when outcomes are underreported. These bounds are shown to be sharp uniformly across outcome levels under additional support conditions, and we propose suitable estimation and bootstrap inference procedures. In an extension, we also consider a semiparametric underreporting model that allows to point identify and estimate distributional treatment effects. As an application, we investigate the impact of recreational marijuana legalization on the consumption behavior of 8th-grade students in several U.S. states.
title Changes-in-Changes for Ordered Choice Models with Underreporting
topic Econometrics
url https://arxiv.org/abs/2401.00618