A degree-corrected Cox model for dynamic networks
Continuous time network data have been successfully modeled by multivariate counting processes, in which the intensity function is characterized by covariate information. However, degree heterogeneity has not been incorporated into the model which may lead to large biases for the estimation of homop...
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Zusammenfassung: | Continuous time network data have been successfully modeled by multivariate
counting processes, in which the intensity function is characterized by
covariate information. However, degree heterogeneity has not been incorporated
into the model which may lead to large biases for the estimation of homophily
effects. In this paper, we propose a degree-corrected Cox network model to
simultaneously analyze the dynamic degree heterogeneity and homophily effects
for continuous time directed network data. Since each node has
individual-specific in- and out-degree effects in the model, the dimension of
the time-varying parameter vector grows with the number of nodes, which makes
the estimation problem non-standard. We develop a local estimating equations
approach to estimate unknown time-varying parameters, and establish consistency
and asymptotic normality of the proposed estimators by using the powerful
martingale process theories. We further propose test statistics to test for
trend and degree heterogeneity in dynamic networks. Simulation studies are
provided to assess the finite sample performance of the proposed method and a
real data analysis is used to illustrate its practical utility. |
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DOI: | 10.48550/arxiv.2301.04296 |