Network Synthetic Interventions: A Causal Framework for Panel Data Under
Network Interference
- URL: http://arxiv.org/abs/2210.11355v2
- Date: Thu, 12 Oct 2023 00:21:14 GMT
- Title: Network Synthetic Interventions: A Causal Framework for Panel Data Under
Network Interference
- Authors: Anish Agarwal, Sarah H. Cen, Devavrat Shah, Christina Lee Yu
- Abstract summary: We consider the estimation of unit-specific potential outcomes from panel data in the presence of spillover across units and unobserved confounding.
Key to our approach is a novel latent factor model that takes into account network interference and generalizes the factor models typically used in panel data settings.
- Score: 23.718967111004964
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We propose a generalization of the synthetic controls and synthetic
interventions methodology to incorporate network interference. We consider the
estimation of unit-specific potential outcomes from panel data in the presence
of spillover across units and unobserved confounding. Key to our approach is a
novel latent factor model that takes into account network interference and
generalizes the factor models typically used in panel data settings. We propose
an estimator, Network Synthetic Interventions (NSI), and show that it
consistently estimates the mean outcomes for a unit under an arbitrary set of
counterfactual treatments for the network. We further establish that the
estimator is asymptotically normal. We furnish two validity tests for whether
the NSI estimator reliably generalizes to produce accurate counterfactual
estimates. We provide a novel graph-based experiment design that guarantees the
NSI estimator produces accurate counterfactual estimates, and also analyze the
sample complexity of the proposed design. We conclude with simulations that
corroborate our theoretical findings.
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