Unconditional quantile regression with high-dimensional data

Credible counterfactual analysis requires high-dimensional controls. This paper considers estimation and inference for heterogeneous counterfactual effects with high-dimensional data. We propose a novel doubly robust score for double/debiased estimation and inference for the unconditional quantile r...

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Main Authors: SASAKI, Yuya, URA, Takuya, ZHANG, Yichong
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Language:English
Published: Institutional Knowledge at Singapore Management University 2020
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Online Access:https://ink.library.smu.edu.sg/soe_research/2460
https://ink.library.smu.edu.sg/context/soe_research/article/3459/viewcontent/Unconditional_Quantile_Regression_High_D_wp__1_.pdf
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spelling sg-smu-ink.soe_research-34592021-01-15T09:27:43Z Unconditional quantile regression with high-dimensional data SASAKI, Yuya URA, Takuya ZHANG, Yichong Credible counterfactual analysis requires high-dimensional controls. This paper considers estimation and inference for heterogeneous counterfactual effects with high-dimensional data. We propose a novel doubly robust score for double/debiased estimation and inference for the unconditional quantile regression (Firpo, Fortin, and Lemieux, 2009) as a measure of heterogeneous counterfactual marginal effects. We propose a multiplier bootstrap inference for the Lasso double/debiased estimator, and develop asymptotic theories to guarantee that the bootstrap works. Simulation studies support our theories. Applying the proposed method to Job Corps survey data, we find that i) marginal effects of counterfactually extending the duration of the exposure to the Job Corps program are globally positive across quantiles regardless of definitions of the treatment and outcome variables, and that ii) these counterfactual effects are larger for higher potential earners than lower potential earners regardless of whether we define the outcome as the level or its logarithm. 2020-10-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/soe_research/2460 https://ink.library.smu.edu.sg/context/soe_research/article/3459/viewcontent/Unconditional_Quantile_Regression_High_D_wp__1_.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Economics eng Institutional Knowledge at Singapore Management University counterfactual analysis double/debiased machine learning doubly robust score Econometrics
institution Singapore Management University
building SMU Libraries
continent Asia
country Singapore
Singapore
content_provider SMU Libraries
collection InK@SMU
language English
topic counterfactual analysis
double/debiased machine learning
doubly robust score
Econometrics
spellingShingle counterfactual analysis
double/debiased machine learning
doubly robust score
Econometrics
SASAKI, Yuya
URA, Takuya
ZHANG, Yichong
Unconditional quantile regression with high-dimensional data
description Credible counterfactual analysis requires high-dimensional controls. This paper considers estimation and inference for heterogeneous counterfactual effects with high-dimensional data. We propose a novel doubly robust score for double/debiased estimation and inference for the unconditional quantile regression (Firpo, Fortin, and Lemieux, 2009) as a measure of heterogeneous counterfactual marginal effects. We propose a multiplier bootstrap inference for the Lasso double/debiased estimator, and develop asymptotic theories to guarantee that the bootstrap works. Simulation studies support our theories. Applying the proposed method to Job Corps survey data, we find that i) marginal effects of counterfactually extending the duration of the exposure to the Job Corps program are globally positive across quantiles regardless of definitions of the treatment and outcome variables, and that ii) these counterfactual effects are larger for higher potential earners than lower potential earners regardless of whether we define the outcome as the level or its logarithm.
format text
author SASAKI, Yuya
URA, Takuya
ZHANG, Yichong
author_facet SASAKI, Yuya
URA, Takuya
ZHANG, Yichong
author_sort SASAKI, Yuya
title Unconditional quantile regression with high-dimensional data
title_short Unconditional quantile regression with high-dimensional data
title_full Unconditional quantile regression with high-dimensional data
title_fullStr Unconditional quantile regression with high-dimensional data
title_full_unstemmed Unconditional quantile regression with high-dimensional data
title_sort unconditional quantile regression with high-dimensional data
publisher Institutional Knowledge at Singapore Management University
publishDate 2020
url https://ink.library.smu.edu.sg/soe_research/2460
https://ink.library.smu.edu.sg/context/soe_research/article/3459/viewcontent/Unconditional_Quantile_Regression_High_D_wp__1_.pdf
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