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Main Authors: Faridani, Stefan, Niehaus, Paul
Format: Preprint
Published: 2022
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Online Access:https://arxiv.org/abs/2209.14181
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author Faridani, Stefan
Niehaus, Paul
author_facet Faridani, Stefan
Niehaus, Paul
contents We study estimation of and inference for the average causal effect of treating every member of a population, as opposed to none, using an experiment that treats only some. Considering settings where spillovers can occur between any pair of units and decay slowly with distance, we derive the minimax rate over all linear estimators and experimental designs, which increases with the spatial rate of spillover decay. This rate of convergence can be achieved using an inverse probability weighting estimator when randomization clusters are large, but not otherwise. If the causal model is linear, however, an OLS-based estimator converges faster than IPW when clusters are small and is consistent even under unit-level randomization. We provide methods for radius selection and inference and apply these to the cash transfer experiment studied by Egger et al. (2022), obtaining a 22% larger estimated effect on consumption.
format Preprint
id arxiv_https___arxiv_org_abs_2209_14181
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle Linear estimation of global average treatment effects
Faridani, Stefan
Niehaus, Paul
Econometrics
We study estimation of and inference for the average causal effect of treating every member of a population, as opposed to none, using an experiment that treats only some. Considering settings where spillovers can occur between any pair of units and decay slowly with distance, we derive the minimax rate over all linear estimators and experimental designs, which increases with the spatial rate of spillover decay. This rate of convergence can be achieved using an inverse probability weighting estimator when randomization clusters are large, but not otherwise. If the causal model is linear, however, an OLS-based estimator converges faster than IPW when clusters are small and is consistent even under unit-level randomization. We provide methods for radius selection and inference and apply these to the cash transfer experiment studied by Egger et al. (2022), obtaining a 22% larger estimated effect on consumption.
title Linear estimation of global average treatment effects
topic Econometrics
url https://arxiv.org/abs/2209.14181