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Main Authors: Yang, Zou, Lee, Seung Hee, Köhler, Julia R., Ghassami, AmirEmad
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2410.16391
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author Yang, Zou
Lee, Seung Hee
Köhler, Julia R.
Ghassami, AmirEmad
author_facet Yang, Zou
Lee, Seung Hee
Köhler, Julia R.
Ghassami, AmirEmad
contents Traditional panel-data causal inference frameworks, such as difference-in-differences and synthetic control methods, rely on pre-intervention data to estimate counterfactual means. However, such data may be unavailable in real-world settings when interventions are implemented in response to sudden events, such as public health crises or epidemiological shocks. In this paper, we introduce two data-fusion methods for causal inference from panel data in scenarios where pre-intervention data are unavailable. These methods leverage auxiliary reference domains with related panel data to estimate causal effects in the target domain, thereby overcoming the limitations imposed by the absence of pre-intervention data. We demonstrate the efficacy of these methods by deriving bounds on the absolute bias that converge to zero under suitable conditions, as well as through simulations across a variety of panel-data settings. Our proposed methodology renders causal inference feasible in urgent and data-constrained environments where the assumptions of existing causal inference frameworks are not met. As an application of our methodology, we evaluate the effect of a community organization vaccination intervention in Chelsea, Massachusetts on COVID-19 vaccination rates.
format Preprint
id arxiv_https___arxiv_org_abs_2410_16391
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Causal Data Fusion for Panel Data without a Pre-Intervention Period
Yang, Zou
Lee, Seung Hee
Köhler, Julia R.
Ghassami, AmirEmad
Methodology
Traditional panel-data causal inference frameworks, such as difference-in-differences and synthetic control methods, rely on pre-intervention data to estimate counterfactual means. However, such data may be unavailable in real-world settings when interventions are implemented in response to sudden events, such as public health crises or epidemiological shocks. In this paper, we introduce two data-fusion methods for causal inference from panel data in scenarios where pre-intervention data are unavailable. These methods leverage auxiliary reference domains with related panel data to estimate causal effects in the target domain, thereby overcoming the limitations imposed by the absence of pre-intervention data. We demonstrate the efficacy of these methods by deriving bounds on the absolute bias that converge to zero under suitable conditions, as well as through simulations across a variety of panel-data settings. Our proposed methodology renders causal inference feasible in urgent and data-constrained environments where the assumptions of existing causal inference frameworks are not met. As an application of our methodology, we evaluate the effect of a community organization vaccination intervention in Chelsea, Massachusetts on COVID-19 vaccination rates.
title Causal Data Fusion for Panel Data without a Pre-Intervention Period
topic Methodology
url https://arxiv.org/abs/2410.16391