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Main Authors: Fernández, Andrés Aradillas, Olea, José Luis Montiel, Qiu, Chen, Stoye, Jörg, Tinda, Serdil
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2408.11621
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author Fernández, Andrés Aradillas
Olea, José Luis Montiel
Qiu, Chen
Stoye, Jörg
Tinda, Serdil
author_facet Fernández, Andrés Aradillas
Olea, José Luis Montiel
Qiu, Chen
Stoye, Jörg
Tinda, Serdil
contents We study a class of binary treatment choice problems with partial identification through the lens of robust (multiple prior) Bayesian analysis. We use a convenient set of prior distributions to derive ex-ante and ex-post robust Bayes decision rules, both for decision makers who can randomize and for decision makers who cannot. Our main messages are as follows: First, ex-ante and ex-post robust Bayes decision rules do not agree in general, whether or not randomized rules are allowed. Second, randomized treatment assignment for some data realizations can be optimal in both ex-ante and, perhaps more surprisingly, ex-post problems. Therefore, it is usually with loss of generality to exclude randomized rules from consideration, even when regret is evaluated ex post. We apply our results to a stylized problem where a policy maker uses experimental data to choose whether to implement a new policy in a population of interest, but is concerned about the external validity of the experiment at hand (Stoye, 2012); and to the aggregation of data generated by multiple randomized control trials in different sites to make a policy choice in a population for which no experimental data are available (Manski, 2020; Ishihara and Kitagawa, 2021).
format Preprint
id arxiv_https___arxiv_org_abs_2408_11621
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Robust Bayes Treatment Choice with Partial Identification
Fernández, Andrés Aradillas
Olea, José Luis Montiel
Qiu, Chen
Stoye, Jörg
Tinda, Serdil
Econometrics
We study a class of binary treatment choice problems with partial identification through the lens of robust (multiple prior) Bayesian analysis. We use a convenient set of prior distributions to derive ex-ante and ex-post robust Bayes decision rules, both for decision makers who can randomize and for decision makers who cannot. Our main messages are as follows: First, ex-ante and ex-post robust Bayes decision rules do not agree in general, whether or not randomized rules are allowed. Second, randomized treatment assignment for some data realizations can be optimal in both ex-ante and, perhaps more surprisingly, ex-post problems. Therefore, it is usually with loss of generality to exclude randomized rules from consideration, even when regret is evaluated ex post. We apply our results to a stylized problem where a policy maker uses experimental data to choose whether to implement a new policy in a population of interest, but is concerned about the external validity of the experiment at hand (Stoye, 2012); and to the aggregation of data generated by multiple randomized control trials in different sites to make a policy choice in a population for which no experimental data are available (Manski, 2020; Ishihara and Kitagawa, 2021).
title Robust Bayes Treatment Choice with Partial Identification
topic Econometrics
url https://arxiv.org/abs/2408.11621