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Main Authors: Kamat, Vishal, Norris, Samuel, Pecenco, Matthew
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2307.06174
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author Kamat, Vishal
Norris, Samuel
Pecenco, Matthew
author_facet Kamat, Vishal
Norris, Samuel
Pecenco, Matthew
contents We develop a marginal treatment effect based method to learn about causal effects in multiple treatment models with discrete instruments. We allow selection into treatment to be governed by a general class of threshold crossing models that permit multidimensional unobserved heterogeneity. An inherent complication is that the primitives characterizing the selection model are not generally point-identified. Allowing these primitives to be point-identified up to a finite-dimensional parameter, we show how a two-step computational program can be used to obtain sharp bounds for a number of treatment effect parameters when the marginal treatment response functions are allowed to satisfy only nonparametric shape restrictions or are additionally parameterized. We demonstrate the benefits of our method by revisiting Kline and Walters' (2016) empirical analysis of the Head Start program. Our approach relaxes their point-identifying assumptions on the selection model and marginal treatment response functions, allowing us to assess the robustness of their conclusions.
format Preprint
id arxiv_https___arxiv_org_abs_2307_06174
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Identification in Multiple Treatment Models under Discrete Variation
Kamat, Vishal
Norris, Samuel
Pecenco, Matthew
Econometrics
We develop a marginal treatment effect based method to learn about causal effects in multiple treatment models with discrete instruments. We allow selection into treatment to be governed by a general class of threshold crossing models that permit multidimensional unobserved heterogeneity. An inherent complication is that the primitives characterizing the selection model are not generally point-identified. Allowing these primitives to be point-identified up to a finite-dimensional parameter, we show how a two-step computational program can be used to obtain sharp bounds for a number of treatment effect parameters when the marginal treatment response functions are allowed to satisfy only nonparametric shape restrictions or are additionally parameterized. We demonstrate the benefits of our method by revisiting Kline and Walters' (2016) empirical analysis of the Head Start program. Our approach relaxes their point-identifying assumptions on the selection model and marginal treatment response functions, allowing us to assess the robustness of their conclusions.
title Identification in Multiple Treatment Models under Discrete Variation
topic Econometrics
url https://arxiv.org/abs/2307.06174