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Main Author: Lee, Myoung-jae
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2501.15814
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author Lee, Myoung-jae
author_facet Lee, Myoung-jae
contents In estimating the effects of a treatment/policy with a network, an unit is subject to two types of treatment: one is the direct treatment on the unit itself, and the other is the indirect treatment (i.e., network/spillover influence) through the treated units among the friends/neighbors of the unit. In the literature, linear models are widely used where either the number of the treated neighbors or the proportion of them among the neighbors represents the intensity of the indirect treatment. In this paper, we obtain a nonparametric network-based "causal reduced form (CRF)" that allows any outcome variable (binary, count, continuous, ...) and any effect heterogeneity. Then we assess those popular linear models through the lens of the CRF. This reveals what kind of restrictive assumptions are embedded in those models, and how the restrictions can result in biases. With the CRF, we conduct almost model-free estimation and inference for network effects.
format Preprint
id arxiv_https___arxiv_org_abs_2501_15814
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Finding network effect of randomized treatment under weak assumptions for any outcome and any effect heterogeneity
Lee, Myoung-jae
Methodology
In estimating the effects of a treatment/policy with a network, an unit is subject to two types of treatment: one is the direct treatment on the unit itself, and the other is the indirect treatment (i.e., network/spillover influence) through the treated units among the friends/neighbors of the unit. In the literature, linear models are widely used where either the number of the treated neighbors or the proportion of them among the neighbors represents the intensity of the indirect treatment. In this paper, we obtain a nonparametric network-based "causal reduced form (CRF)" that allows any outcome variable (binary, count, continuous, ...) and any effect heterogeneity. Then we assess those popular linear models through the lens of the CRF. This reveals what kind of restrictive assumptions are embedded in those models, and how the restrictions can result in biases. With the CRF, we conduct almost model-free estimation and inference for network effects.
title Finding network effect of randomized treatment under weak assumptions for any outcome and any effect heterogeneity
topic Methodology
url https://arxiv.org/abs/2501.15814