A Risk Manager for Intrusion Tolerant Systems: Enhancing HAL 9000 with New Scoring and Data Sources
Tadeu Freitas, Carlos Novo, In\^es Dutra, Jo\~ao Soares, Manuel Correia, Benham Shariati, Rolando Martins

TL;DR
This paper enhances the HAL 9000 intrusion tolerant system's risk management by integrating a new data scraper that sources diverse threat intelligence, improving early detection and response to emerging vulnerabilities.
Contribution
It introduces a custom scraper for diverse threat sources, expanding HAL 9000's intelligence and improving its proactive threat assessment capabilities.
Findings
Enhanced threat detection with diverse data sources
Improved risk assessment accuracy
Faster response to emerging vulnerabilities
Abstract
Intrusion Tolerant Systems (ITSs) have become increasingly critical due to the rise of multi-domain adversaries exploiting diverse attack surfaces. ITS architectures aim to tolerate intrusions, ensuring system compromise is prevented or mitigated even with adversary presence. Existing ITS solutions often employ Risk Managers leveraging public security intelligence to adjust system defenses dynamically against emerging threats. However, these approaches rely heavily on databases like NVD and ExploitDB, which require manual analysis for newly discovered vulnerabilities. This dependency limits the system's responsiveness to rapidly evolving threats. HAL 9000, an ITS Risk Manager introduced in our prior work, addressed these challenges through machine learning. By analyzing descriptions of known vulnerabilities, HAL 9000 predicts and assesses new vulnerabilities automatically. To calculate…
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