CyberThreat-Eval: Can Large Language Models Automate Real-World Threat Research?
Xiangsen Chen, Xuan Feng, Shuo Chen, Matthieu Maitre, Sudipto Rakshit, Diana Duvieilh, Ashley Picone, Nan Tang

TL;DR
CyberThreat-Eval is a new benchmark based on real-world threat research workflows that evaluates large language models on practical cybersecurity tasks, highlighting current limitations and guiding future improvements.
Contribution
It introduces a comprehensive, expert-annotated benchmark reflecting real-world CTI workflows and proposes analyst-centric metrics for evaluating LLM performance in cybersecurity.
Findings
LLMs often lack nuanced expertise in complex threat analysis.
Current models struggle to distinguish between correct and incorrect information.
Incorporating human feedback and external databases improves LLM performance.
Abstract
Analyzing Open Source Intelligence (OSINT) from large volumes of data is critical for drafting and publishing comprehensive CTI reports. This process usually follows a three-stage workflow -- triage, deep search and TI drafting. While Large Language Models (LLMs) offer a promising route toward automation, existing benchmarks still have limitations. These benchmarks often consist of tasks that do not reflect real-world analyst workflows. For example, human analysts rarely receive tasks in the form of multiple-choice questions. Also, existing benchmarks often rely on model-centric metrics that emphasize lexical overlap rather than actionable, detailed insights essential for security analysts. Moreover, they typically fail to cover the complete three-stage workflow. To address these issues, we introduce CyberThreat-Eval, which is collected from the daily CTI workflow of a world-leading…
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Taxonomy
TopicsArtificial Intelligence in Healthcare and Education · Spam and Phishing Detection · Intelligence, Security, War Strategy
