Causal Inference for Social Network Formation
Maximilian Kasy (),
Elizabeth Linos () and
Sanaz Mobasseri ()
Additional contact information
Maximilian Kasy: University of Oxford
Elizabeth Linos: Harvard Kennedy School
Sanaz Mobasseri: UCL
No 18759, IZA Discussion Papers from IZA Network @ LISER
Abstract:
This paper develops a framework for identification, estimation, and inference on the causal mechanisms driving endogenous social network formation. Identification is challenging because of unobserved confounders and reverse causality; inference is complicated by questions of equilibrium and sampling. We leverage repeated observations of a network over time and random variation in initial ties to address challenges to causal identification. Our design-based approach sidesteps questions of sampling and asymptotics by treating both the set of nodes (individuals) and potential outcomes as non-random. We apply our approach to data from a large professional services firm, where new hires are randomly assigned to project teams within offices. We estimate the causal effect on tie formation of indirect ties, network degree, and local network density. Indirect ties have a strong and significant positive effect on tie formation, while the effects of degree and density are smaller and less robust.
Keywords: network formation; design-based inference (search for similar items in EconPapers)
JEL-codes: C31 D85 (search for similar items in EconPapers)
Date: 2026-06
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Persistent link: https://EconPapers.repec.org/RePEc:iza:izadps:dp18759
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