To address the growing availability of complex network data, [3] introduced partially exchangeable stochastic block models for multi-layer networks using random partition priors based on hierarchical normalized completely random measures. With this approach, the layer division information carried by a node-colored multilayer network is induced by imposing the suitable distributional invariance to the prior, leading to a new and probabilistically coherent way of modeling complex networks. In this paper we leverage these models to analyze multiple node-colored networks.

(2025). Modeling Multiple Node-Colored Networks with Partial Exchangeability . Retrieved from https://hdl.handle.net/10446/311835

Modeling Multiple Node-Colored Networks with Partial Exchangeability

Gaffi, Francesco
2025-01-01

Abstract

To address the growing availability of complex network data, [3] introduced partially exchangeable stochastic block models for multi-layer networks using random partition priors based on hierarchical normalized completely random measures. With this approach, the layer division information carried by a node-colored multilayer network is induced by imposing the suitable distributional invariance to the prior, leading to a new and probabilistically coherent way of modeling complex networks. In this paper we leverage these models to analyze multiple node-colored networks.
2025
Gaffi, Francesco
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10446/311835
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