Graph cluster randomization: network exposure to multiple universes
Johan Ugander, Brian Karrer, Lars Backstrom, Jon Kleinberg

TL;DR
This paper introduces a graph clustering methodology for unbiased and low-variance estimation of treatment effects in social networks, addressing interference issues in A/B testing.
Contribution
It proposes a novel graph cluster randomization approach with an efficient algorithm for exposure probability calculation and variance reduction under certain graph conditions.
Findings
Cluster randomization reduces estimator variance exponentially in certain graphs.
The method provides an unbiased effect estimate using inverse probability weighting.
Proper clustering can significantly improve the precision of social interference experiments.
Abstract
A/B testing is a standard approach for evaluating the effect of online experiments; the goal is to estimate the `average treatment effect' of a new feature or condition by exposing a sample of the overall population to it. A drawback with A/B testing is that it is poorly suited for experiments involving social interference, when the treatment of individuals spills over to neighboring individuals along an underlying social network. In this work, we propose a novel methodology using graph clustering to analyze average treatment effects under social interference. To begin, we characterize graph-theoretic conditions under which individuals can be considered to be `network exposed' to an experiment. We then show how graph cluster randomization admits an efficient exact algorithm to compute the probabilities for each vertex being network exposed under several of these exposure conditions.…
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Taxonomy
TopicsAdvanced Causal Inference Techniques · Complex Network Analysis Techniques · Social Media and Politics
