Establishes set identification for dynamic dyadic network formation with fixed effects using dyad-level inequalities and signed subgraph comparisons, with point identification under serially independent known errors and additive individual fixed effects.
(2017): Semiparametric Estimation in Network Formation Models with Homophily and Degree Heterogeneity, Available at SSRN 2988698
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Identification in Dynamic Dyadic Network Formation Models with Fixed Effects
Establishes set identification for dynamic dyadic network formation with fixed effects using dyad-level inequalities and signed subgraph comparisons, with point identification under serially independent known errors and additive individual fixed effects.