Peer Reviewed Article

Inference in Spatial Experiments with Interference using the SpatialEffect Package

Authors
  • PM Aronow
  • Cyrus Samii
  • Jonathan Sullivan
  • Ye Wang
Published
November 16, 2022
Publication
Journal of Agricultural, Biological and Environmental Statistics
Discipline
Areas of Study
Geographic Areas
Document Control Number(s)
  • ISPS 22-40
Citation

Samii, C., Wang, Y., Sullivan, J. et al. Inference in Spatial Experiments with Interference using the SpatialEffect Package. JABES 28, 138–156 (2023).

Abstract

This paper presents methods for analyzing spatial experiments when complex spillovers, displacement effects, and other types of “interference” are present. We present a robust, design-based approach to analyzing effects in such settings. The design-based approach derives inferential properties for causal effect estimators from known features of the experimental design, in a manner analogous to inference in sample surveys. The methods presented here target a quantity of interest called the “average marginalized response,” which is equal to the average effect of activating a treatment at an intervention node that is a given distance away, averaging ambient effects emanating from other intervention nodes. We provide a step-by-step tutorial based on the SpatialEffect package for R. We apply the methods to a randomized experiment on payments for community forest conservation in Uganda, showing how our methods reveal possibly substantial spatial spillovers that more conventional analyses cannot detect.

Description

Supplemental:

Link to article (gated).