Using Embeddings for Causal Estimation of Peer Influence in Social
Networks
- URL: http://arxiv.org/abs/2205.08033v1
- Date: Tue, 17 May 2022 00:22:56 GMT
- Title: Using Embeddings for Causal Estimation of Peer Influence in Social
Networks
- Authors: Irina Cristali and Victor Veitch
- Abstract summary: We address the problem of using observational data to estimate peer contagion effects.
We show how embedding methods can be used to identify and estimate this effect.
- Score: 12.971519813535734
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We address the problem of using observational data to estimate peer contagion
effects, the influence of treatments applied to individuals in a network on the
outcomes of their neighbors. A main challenge to such estimation is that
homophily - the tendency of connected units to share similar latent traits -
acts as an unobserved confounder for contagion effects. Informally, it's hard
to tell whether your friends have similar outcomes because they were influenced
by your treatment, or whether it's due to some common trait that caused you to
be friends in the first place. Because these common causes are not usually
directly observed, they cannot be simply adjusted for. We describe an approach
to perform the required adjustment using node embeddings learned from the
network itself. The main aim is to perform this adjustment nonparametrically,
without functional form assumptions on either the process that generated the
network or the treatment assignment and outcome processes. The key
contributions are to nonparametrically formalize the causal effect in a way
that accounts for homophily, and to show how embedding methods can be used to
identify and estimate this effect. Code is available at
https://github.com/IrinaCristali/Peer-Contagion-on-Networks.
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