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Main Authors: Morrison, Tim, Nguyen, Minh, Chen, Jonathan, Baiocchi, Michael, Owen, Art B.
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2406.05592
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author Morrison, Tim
Nguyen, Minh
Chen, Jonathan
Baiocchi, Michael
Owen, Art B.
author_facet Morrison, Tim
Nguyen, Minh
Chen, Jonathan
Baiocchi, Michael
Owen, Art B.
contents We study the question of how best to assign an encouragement in a randomized encouragement study. In our setting, units arrive with covariates, receive a nudge toward treatment or control, acquire one of those statuses in a way that need not align with the nudge, and finally have a response observed. The nudge can be modeled as a binary instrument if one assumes that it affects the response only via the treatment status. Our goal is to assign the nudge as a function of covariates in a way that best estimates the local average treatment effect (LATE). We assume a partially linear model, wherein the baseline model is non-parametric and the treatment term is linear in the covariates. Under this model, we outline a two-stage procedure to consistently and optimally estimate the LATE. Though the variance of the LATE is intractable, we derive a finite sample approximation and thus a design criterion to minimize. This criterion is convex, allowing for constraints that might arise for budgetary or ethical reasons. We prove conditions under which our solution asymptotically recovers the lowest true variance among all possible nudge propensities. A one-stage version of the algorithm is consistent but not necessarily optimal. We apply our method to a semi-synthetic example involving triage in an emergency department and find significant gains relative to a regression discontinuity design.
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id arxiv_https___arxiv_org_abs_2406_05592
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publishDate 2024
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spellingShingle Constrained Design of a Binary Instrument in a Partially Linear Model
Morrison, Tim
Nguyen, Minh
Chen, Jonathan
Baiocchi, Michael
Owen, Art B.
Methodology
We study the question of how best to assign an encouragement in a randomized encouragement study. In our setting, units arrive with covariates, receive a nudge toward treatment or control, acquire one of those statuses in a way that need not align with the nudge, and finally have a response observed. The nudge can be modeled as a binary instrument if one assumes that it affects the response only via the treatment status. Our goal is to assign the nudge as a function of covariates in a way that best estimates the local average treatment effect (LATE). We assume a partially linear model, wherein the baseline model is non-parametric and the treatment term is linear in the covariates. Under this model, we outline a two-stage procedure to consistently and optimally estimate the LATE. Though the variance of the LATE is intractable, we derive a finite sample approximation and thus a design criterion to minimize. This criterion is convex, allowing for constraints that might arise for budgetary or ethical reasons. We prove conditions under which our solution asymptotically recovers the lowest true variance among all possible nudge propensities. A one-stage version of the algorithm is consistent but not necessarily optimal. We apply our method to a semi-synthetic example involving triage in an emergency department and find significant gains relative to a regression discontinuity design.
title Constrained Design of a Binary Instrument in a Partially Linear Model
topic Methodology
url https://arxiv.org/abs/2406.05592