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CAUSAL INFERENCE UNDER APPROXIMATE NEIGHBORHOOD INTERFERENCE
by
Leung, Michael P.
in
Bias
/ Causal inference
/ Causality
/ Ego
/ Experiments
/ Inference
/ Neighborhoods
/ network interference
/ Networks
/ Self concept
/ Social interaction
/ Social networks
/ Treatment methods
/ Weighting
2022
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Do you wish to request the book?
CAUSAL INFERENCE UNDER APPROXIMATE NEIGHBORHOOD INTERFERENCE
by
Leung, Michael P.
in
Bias
/ Causal inference
/ Causality
/ Ego
/ Experiments
/ Inference
/ Neighborhoods
/ network interference
/ Networks
/ Self concept
/ Social interaction
/ Social networks
/ Treatment methods
/ Weighting
2022
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CAUSAL INFERENCE UNDER APPROXIMATE NEIGHBORHOOD INTERFERENCE
Journal Article
CAUSAL INFERENCE UNDER APPROXIMATE NEIGHBORHOOD INTERFERENCE
2022
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Overview
This paper studies causal inference in randomized experiments under network interference. Commonly used models of interference posit that treatments assigned to alters beyond a certain network distance from the ego have no effect on the ego’s response. However, this assumption is violated in common models of social interactions. We propose a substantially weaker model of “approximate neighborhood interference” (ANI) under which treatments assigned to alters further from the ego have a smaller, but potentially nonzero, effect on the ego’s response. We formally verify that ANI holds for well-known models of social interactions. Under ANI, restrictions on the network topology, and asymptotics under which the network size increases, we prove that standard inverse-probability weighting estimators consistently estimate useful exposure effects and are approximately normal. For inference, we consider a network HAC variance estimator. Under a finite population model, we show that the estimator is biased but that the bias can be interpreted as the variance of unit-level exposure effects. This generalizes Neyman’s well-known result on conservative variance estimation to settings with interference.
Publisher
Wiley,Blackwell Publishing Ltd
Subject
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