AGIR: Automating Cyber Threat Intelligence Reporting with Natural Language Generation
Filippo Perrina, Francesco Marchiori, Mauro Conti, Nino Vincenzo Verde

TL;DR
AGIR is a Natural Language Generation tool that automates cyber threat intelligence report creation from formal data, significantly reducing manual effort while maintaining high accuracy and fluency.
Contribution
Introduces AGIR, a novel two-stage NLG system combining templates and large language models to automate CTI reporting from formal entity graphs.
Findings
High recall (0.99) in report accuracy
Reports outperform state-of-the-art in fluency and utility
Reduces report writing time by over 40%
Abstract
Cyber Threat Intelligence (CTI) reporting is pivotal in contemporary risk management strategies. As the volume of CTI reports continues to surge, the demand for automated tools to streamline report generation becomes increasingly apparent. While Natural Language Processing techniques have shown potential in handling text data, they often struggle to address the complexity of diverse data sources and their intricate interrelationships. Moreover, established paradigms like STIX have emerged as de facto standards within the CTI community, emphasizing the formal categorization of entities and relations to facilitate consistent data sharing. In this paper, we introduce AGIR (Automatic Generation of Intelligence Reports), a transformative Natural Language Generation tool specifically designed to address the pressing challenges in the realm of CTI reporting. AGIR's primary objective is to…
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Taxonomy
TopicsSoftware Engineering Research · Topic Modeling · Cybercrime and Law Enforcement Studies
