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Open AccessJournal ArticleDOI

Estimating average causal effects under general interference, with application to a social network experiment

Peter M. Aronow, +1 more
- 01 Dec 2017 - 
- Vol. 11, Iss: 4, pp 1912-1947
TLDR
In this article, a randomization-based framework for estimating causal effects under interference between units motivated by challenges that arise in analyzing experiments on social networks is presented. But the experimental design is different from ours.
Abstract
This paper presents a randomization-based framework for estimating causal effects under interference between units motivated by challenges that arise in analyzing experiments on social networks. The framework integrates three components: (i) an experimental design that defines the probability distribution of treatment assignments, (ii) a mapping that relates experimental treatment assignments to exposures received by units in the experiment, and (iii) estimands that make use of the experiment to answer questions of substantive interest. We develop the case of estimating average unit-level causal effects from a randomized experiment with interference of arbitrary but known form. The resulting estimators are based on inverse probability weighting. We provide randomization-based variance estimators that account for the complex clustering that can occur when interference is present. We also establish consistency and asymptotic normality under local dependence assumptions. We discuss refinements including covariate-adjusted effect estimators and ratio estimation. We evaluate empirical performance in realistic settings with a naturalistic simulation using social network data from American schools. We then present results from a field experiment on the spread of anti-conflict norms and behavior among school students.

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Book ChapterDOI

Chapter 3 - The Econometrics of Randomized Experimentsa

TL;DR: This chapter presents econometric and statistical methods for analyzing randomized experiments, and considers, in detail, estimation and inference for heterogenous treatment effects in settings with (possibly many) covariates.
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Exact P-values for Network Interference

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Exact P-Values for Network Interference

TL;DR: In this article, the authors study a class of non-sharp null hypotheses about treatment effects in a setting with data from experiments involving members of a single connected network, including null hypotheses that limit the effect of one unit's treatment status on another according to the distance between units; for example, the hypothesis might specify that the treatment status of immediate neighbors has no effect, or that units more than two edges away have no effect.
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Identification and estimation of treatment and interference effects in observational studies on networks

TL;DR: An extended unconfoundedness assumption that accounts for interference is proposed, and new covariate-adjustment methods are developed that lead to valid estimates of treatment and interference effects in observational studies on networks.

Matching Methods for Causal Inference with Time-Series Cross-Sectional Data [R package PanelMatch version 1.0.0]

TL;DR: This work first match each treated observation with control observations from other units in the same time period that have an identical treatment history up to the prespecified number of lags, and uses standard matching and weighting methods to further refine this matched set.
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