On Quantile Treatment Effects, Rank Similarity, and Multiple IVs
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                                        Series
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                                        SpeakersSukjin Han (University of Bristol, United Kingdom)
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                                        FieldEconometrics
 
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                                        LocationUniversity of Amsterdam, room E5.22
Amsterdam - 
                                    Date and time
October 21, 2022
12:30 - 13:30 
Abstract
This paper investigates how certain relationship between observed and 
counterfactual distributions plays a role in the identification of 
distributional treatment effects under endogeneity, and shows that this 
relationship holds in a range of nonparametric models for treatment 
effects and can be tested with the data. To motivate the new identifying
 assumption, we first provide a novel way of characterizing popular 
assumptions restricting treatment heterogeneity in the literature, 
specifically rank similarity assumptions. We show the stringency of this
 type of assumptions and propose to relax them in economically 
meaningful ways. This relaxation will justify certain parameters (e.g., 
treatment effects on the treated) against others (e.g., treatment 
effects for the entire population). It will also justify the quest of 
richer exogenous variation in the data (e.g., the use of multiple 
instrumental variables). The prime goal of this investigation is to 
provide empirical researchers with tools for identifying and estimating 
treatment effects that are flexible enough to allow for treatment 
heterogeneity, but that still yield tight policy evaluation and are easy
 to implement.