Extended Stochastic Block Models with Application to Criminal Networks
Sirio Legramanti, Tommaso Rigon, Daniele Durante, David B. Dunson

TL;DR
This paper introduces extended stochastic block models (ESBM) that better capture complex, noisy group structures in criminal networks, incorporating node attributes and providing improved estimation and uncertainty quantification.
Contribution
The paper develops a new class of ESBM with Gibbs priors, including the Gnedin process, for more realistic modeling of criminal networks with complex structures.
Findings
ESBM outperforms existing methods in simulations.
Application to Italian mafia network reveals hidden structures.
Gnedin process effectively models finite, reinforced groups.
Abstract
Reliably learning group structures among nodes in network data is challenging in several applications. We are particularly motivated by studying covert networks that encode relationships among criminals. These data are subject to measurement errors, and exhibit a complex combination of an unknown number of core-periphery, assortative and disassortative structures that may unveil key architectures of the criminal organization. The coexistence of these noisy block patterns limits the reliability of routinely-used community detection algorithms, and requires extensions of model-based solutions to realistically characterize the node partition process, incorporate information from node attributes, and provide improved strategies for estimation and uncertainty quantification. To cover these gaps, we develop a new class of extended stochastic block models (ESBM) that infer groups of nodes…
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Taxonomy
TopicsComplex Network Analysis Techniques · Crime Patterns and Interventions · Opinion Dynamics and Social Influence
