Generalized Poisson Dynamic Network Models
Giulia Carallo, Roberto Casarin, Antonio Peruzzi
TLDR
Introduces Generalized Poisson dynamic network models to accurately capture under- and overdispersion in count-weighted temporal networks.
Key contributions
- Proposes Generalized Poisson dynamic network models for count-weighted temporal networks.
- Captures both under- and overdispersion in edge weights, improving upon existing models.
- Incorporates latent factor, autoregressive, and latent position dynamic specifications.
- Demonstrates improved accuracy and predictive performance by explicitly modeling overdispersion.
Why it matters
Existing network models often neglect unequal dispersion in edge weights, leading to biased results. This paper offers a robust solution with Generalized Poisson models, significantly improving accuracy and predictive power. Explicitly modeling dispersion is vital for understanding complex network dynamics in real-world applications.
Original Abstract
Count-weighted temporal networks often exhibit unequal dispersion in the edge weights, which cannot be fully explained by modelling observational heterogeneity through latent factors in the conditional mean. Therefore, we propose new dynamic network model classes exploiting the Generalized Poisson distribution to capture both under- and overdispersion. We consider three different dynamic specifications: latent factor dynamics, autoregressive dynamics, and latent position dynamics, and study some theoretical properties of the random networks, showing the impact of the dispersion parameter on the random network's connectivity. After discussing the parameter identification strategy, we present a Bayesian inference procedure along with a posterior sampling algorithm. A numerical illustration demonstrates the effectiveness of the designed algorithm and provides estimates of the misspecification bias when unequal dispersion is neglected. Our new models are then applied to two relevant dynamic datasets considered in previous studies: a set of bike-sharing dynamic networks and a set of dynamic media networks. Our results highlight the importance of explicitly modeling overdispersion for both an accurate in-sample fit and out-of-sample performance.
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