Contagion Effect Estimation Using Proximal Embeddings
Zahra Fatemi, Elena Zheleva

TL;DR
This paper introduces Proximal Embeddings, a novel method combining variational autoencoders and adversarial networks to improve contagion effect estimation in social networks by reducing variance and handling high-dimensional proxies.
Contribution
The paper proposes a new framework, Proximal Embeddings, that enhances contagion effect estimation by integrating VAEs and adversarial training to create low-dimensional, balanced representations of proxies.
Findings
Significantly improves accuracy of contagion effect estimates.
Reduces variance compared to existing methods.
Effective in high-dimensional proxy scenarios.
Abstract
Contagion effect refers to the causal effect of peers' behavior on the outcome of an individual in social networks. Contagion can be confounded due to latent homophily which makes contagion effect estimation very hard: nodes in a homophilic network tend to have ties to peers with similar attributes and can behave similarly without influencing one another. One way to account for latent homophily is by considering proxies for the unobserved confounders. However, as we demonstrate in this paper, existing proxy-based methods for contagion effect estimation have a very high variance when the proxies are high-dimensional. To address this issue, we introduce a novel framework, Proximal Embeddings (ProEmb), that integrates variational autoencoders with adversarial networks to create low-dimensional representations of high-dimensional proxies and help with identifying contagion effects. While…
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Taxonomy
TopicsAdvanced Causal Inference Techniques · Functional Brain Connectivity Studies · Opinion Dynamics and Social Influence
MethodsCausal inference
