Semiparametric Modeling and Analysis for Longitudinal Network Data
We introduce a semiparametric latent space model for analyzing longitudinal network data. The model consists of a static latent space component and a time-varying node-specific baseline component. We develop a semiparametric efficient score equation for the latent space parameter by adjusting for th...
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Zusammenfassung: | We introduce a semiparametric latent space model for analyzing longitudinal
network data. The model consists of a static latent space component and a
time-varying node-specific baseline component. We develop a semiparametric
efficient score equation for the latent space parameter by adjusting for the
baseline nuisance component. Estimation is accomplished through a one-step
update estimator and an appropriately penalized maximum likelihood estimator.
We derive oracle error bounds for the two estimators and address
identifiability concerns from a quotient manifold perspective. Our approach is
demonstrated using the New York Citi Bike Dataset. |
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DOI: | 10.48550/arxiv.2308.12227 |