In this work we focus on the “Noordin Mohamed Top” dataset, develop- ing an asymmetric approach that treats one network as response and the remaining as covariates. The objective is to identify which information may be useful in pre- dicting terrorists’ collaboration in a bombing attack, identifying at the same time the most influential subjects involved in these dynamics. Such aim is addressed through an asymmetric Bayesian semi-parametric model for networks that, through a suitable prior specification, integrates a flexible regularization and the detection of leading nodes

A Bayesian semiparametric model for terrorist networks

Emanuele Aliverti
2017-01-01

Abstract

In this work we focus on the “Noordin Mohamed Top” dataset, develop- ing an asymmetric approach that treats one network as response and the remaining as covariates. The objective is to identify which information may be useful in pre- dicting terrorists’ collaboration in a bombing attack, identifying at the same time the most influential subjects involved in these dynamics. Such aim is addressed through an asymmetric Bayesian semi-parametric model for networks that, through a suitable prior specification, integrates a flexible regularization and the detection of leading nodes
2017
Book of short papers - SIS 2017
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10278/3743848
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