AttacKG+:Boosting Attack Knowledge Graph Construction with Large Language Models
Yongheng Zhang, Tingwen Du, Yunshan Ma, Xiang Wang, Yi Xie, Guozheng, Yang, Yuliang Lu, Ee-Chien Chang

TL;DR
This paper introduces AttacKG+, an automatic framework leveraging Large Language Models to construct detailed attack knowledge graphs from cyber threat reports, improving generalization and aiding security analysis.
Contribution
It presents a novel LLM-based, fully automatic framework with an upgraded attack schema for constructing comprehensive attack knowledge graphs.
Findings
Effective in extracting detailed attack information
Faithfully constructs attack graphs for threat analysis
Enhances downstream security practices like attack reconstruction
Abstract
Attack knowledge graph construction seeks to convert textual cyber threat intelligence (CTI) reports into structured representations, portraying the evolutionary traces of cyber attacks. Even though previous research has proposed various methods to construct attack knowledge graphs, they generally suffer from limited generalization capability to diverse knowledge types as well as requirement of expertise in model design and tuning. Addressing these limitations, we seek to utilize Large Language Models (LLMs), which have achieved enormous success in a broad range of tasks given exceptional capabilities in both language understanding and zero-shot task fulfillment. Thus, we propose a fully automatic LLM-based framework to construct attack knowledge graphs named: AttacKG+. Our framework consists of four consecutive modules: rewriter, parser, identifier, and summarizer, each of which is…
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Taxonomy
TopicsTopic Modeling · Advanced Graph Neural Networks · Natural Language Processing Techniques
