Optimal Design of Experiments in the Presence of Interference

We formalize the optimal design of experiments when there is interference between units, i.e. an individual's outcome depends on the outcomes of others in her group. We focus on randomized saturation designs, two-stage experiments that first randomize treatment saturation of a group, then individual treatment assignment. We map the potential outcomes framework with partial interference to a regression model with clustered errors, calculate standard errors of randomized saturation designs, and derive analytical insights about the optimal design. We show that the power to detect average treatment effects declines precisely with the ability to identify novel treatment and spillover effects.

Saved in:
Bibliographic Details
Main Authors: Baird, Sarah, Bohren, J. Aislinn, McIntosh, Craig, Ozler, Berk
Format: Journal Article biblioteca
Published: The MIT Press 2018-01-12
Subjects:EXPERIMENTAL DESIGN, CAUSAL INTERFERENCE, SPILLOVER EFFECT,
Online Access:http://hdl.handle.net/10986/29656
Tags: Add Tag
No Tags, Be the first to tag this record!
Description
Summary:We formalize the optimal design of experiments when there is interference between units, i.e. an individual's outcome depends on the outcomes of others in her group. We focus on randomized saturation designs, two-stage experiments that first randomize treatment saturation of a group, then individual treatment assignment. We map the potential outcomes framework with partial interference to a regression model with clustered errors, calculate standard errors of randomized saturation designs, and derive analytical insights about the optimal design. We show that the power to detect average treatment effects declines precisely with the ability to identify novel treatment and spillover effects.