LLM-Driven APT Detection for 6G Wireless Networks: A Systematic Review and Taxonomy
Muhammed Golec, Yaser Khamayseh, Suhib Bani Melhem, Abdulmalik Alwarafy

TL;DR
This paper systematically reviews the use of Large Language Models for detecting advanced persistent threats in 6G wireless networks, highlighting challenges, taxonomies, and future research directions.
Contribution
It provides the first comprehensive review and taxonomy of LLM-assisted APT detection methods specifically for 6G networks, addressing key challenges and research gaps.
Findings
Identifies open challenges like explainability and data scarcity.
Proposes taxonomies based on deployment and attack stages.
Highlights future research directions for 6G security.
Abstract
Sixth Generation (6G) wireless networks, which are expected to be deployed in the 2030s, have already created great excitement in academia and the private sector with their extremely high communication speed and low latency rates. However, despite the ultra-low latency, high throughput, and AI-assisted orchestration capabilities they promise, they are vulnerable to stealthy and long-term Advanced Persistent Threats (APTs). Large Language Models (LLMs) stand out as an ideal candidate to fill this gap with their high success in semantic reasoning and threat intelligence. In this paper, we present a comprehensive systematic review and taxonomy study for LLM-assisted APT detection in 6G networks. We address five research questions, namely, semantic merging of fragmented logs, encrypted traffic analysis, edge distribution constraints, dataset/modeling techniques, and reproducibility trends,…
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