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Main Authors: Chen, Le-Yu, Yen, Yu-Min
Format: Preprint
Published: 2021
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Online Access:https://arxiv.org/abs/2109.08793
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author Chen, Le-Yu
Yen, Yu-Min
author_facet Chen, Le-Yu
Yen, Yu-Min
contents The conditional tail average treatment effect (CTATE) is defined as a difference between the conditional tail expectations of potential outcomes, which can capture heterogeneity and deliver aggregated local information on treatment effects over different quantile levels and is closely related to the notion of second-order stochastic dominance and the Lorenz curve. These properties render it a valuable tool for policy evaluation. In this paper, we study estimation of the CTATE locally for a group of compliers (local CTATE or LCTATE) under the two-sided noncompliance framework. We consider a semiparametric treatment effect framework under endogeneity for the LCTATE estimation using a newly introduced class of consistent loss functions jointly for the conditional tail expectation and quantile. We establish the asymptotic theory of our proposed LCTATE estimator and provide an efficient algorithm for its implementation. We then apply the method to evaluate the effects of participating in programs under the Job Training Partnership Act in the US.
format Preprint
id arxiv_https___arxiv_org_abs_2109_08793
institution arXiv
publishDate 2021
record_format arxiv
spellingShingle Estimations of the Local Conditional Tail Average Treatment Effect
Chen, Le-Yu
Yen, Yu-Min
Applications
Econometrics
The conditional tail average treatment effect (CTATE) is defined as a difference between the conditional tail expectations of potential outcomes, which can capture heterogeneity and deliver aggregated local information on treatment effects over different quantile levels and is closely related to the notion of second-order stochastic dominance and the Lorenz curve. These properties render it a valuable tool for policy evaluation. In this paper, we study estimation of the CTATE locally for a group of compliers (local CTATE or LCTATE) under the two-sided noncompliance framework. We consider a semiparametric treatment effect framework under endogeneity for the LCTATE estimation using a newly introduced class of consistent loss functions jointly for the conditional tail expectation and quantile. We establish the asymptotic theory of our proposed LCTATE estimator and provide an efficient algorithm for its implementation. We then apply the method to evaluate the effects of participating in programs under the Job Training Partnership Act in the US.
title Estimations of the Local Conditional Tail Average Treatment Effect
topic Applications
Econometrics
url https://arxiv.org/abs/2109.08793