<em>MACHINE LEARNING</em> PER CARATTERIZZARE GLI ATTACCHI TERRORISTICI

Autori

  • Silvia Figini Dipartimento di Scienze Politiche e Sociali, Università degli Studi di Pavia

DOI:

https://doi.org/10.4081/let.2018.680

Abstract

For security departments understanding the dynamics of terrorist events finding significant and recurrent patterns can have an important impact in the counter-terrorism strategy development. Machine learning techniques coupled with domain knowledge are useful to understand terrorist behaviours with high accuracy, thus helping policy makers for time-sensitive understanding of terrorist activity, which can enable precautions to avoid against future attacks. In this paper different computational techniques, able to derive relationships among terrorist attacks and detect terrorist behaviours, are used on the Global Terrorism Database. The analysis proposed in this paper could help security and government departments to prevent terrorist attacks and to reduce financial, human and political losses. Furthermore, this information can be useful for law enforcement agencies to propose reactive strategies.

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Pubblicato

2020-07-15

Come citare

Figini, S. (2020). <em>MACHINE LEARNING</em> PER CARATTERIZZARE GLI ATTACCHI TERRORISTICI. Istituto Lombardo - Accademia Di Scienze E Lettere • Rendiconti Di Lettere. https://doi.org/10.4081/let.2018.680

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