English

MalRAG: A Retrieval-Augmented LLM Framework for Open-set Malicious Traffic Identification

Cryptography and Security 2025-11-19 v1 Machine Learning

Abstract

Fine-grained identification of IDS-flagged suspicious traffic is crucial in cybersecurity. In practice, cyber threats evolve continuously, making the discovery of novel malicious traffic a critical necessity as well as the identification of known classes. Recent studies have advanced this goal with deep models, but they often rely on task-specific architectures that limit transferability and require per-dataset tuning. In this paper we introduce MalRAG, the first LLM driven retrieval-augmented framework for open-set malicious traffic identification. MalRAG freezes the LLM and operates via comprehensive traffic knowledge construction, adaptive retrieval, and prompt engineering. Concretely, we construct a multi-view traffic database by mining prior malicious traffic from content, structural, and temporal perspectives. Furthermore, we introduce a Coverage-Enhanced Retrieval Algorithm that queries across these views to assemble the most probable candidates, thereby improving the inclusion of correct evidence. We then employ Traffic-Aware Adaptive Pruning to select a variable subset of these candidates based on traffic-aware similarity scores, suppressing incorrect matches and yielding reliable retrieved evidence. Moreover, we develop a suite of guidance prompts where task instruction, evidence referencing, and decision guidance are integrated with the retrieved evidence to improve LLM performance. Across diverse real-world datasets and settings, MalRAG delivers state-of-the-art results in both fine-grained identification of known classes and novel malicious traffic discovery. Ablation and deep-dive analyses further show that MalRAG effective leverages LLM capabilities yet achieves open-set malicious traffic identification without relying on a specific LLM.

Keywords

Cite

@article{arxiv.2511.14129,
  title  = {MalRAG: A Retrieval-Augmented LLM Framework for Open-set Malicious Traffic Identification},
  author = {Xiang Luo and Chang Liu and Gang Xiong and Chen Yang and Gaopeng Gou and Yaochen Ren and Zhen Li},
  journal= {arXiv preprint arXiv:2511.14129},
  year   = {2025}
}

Comments

13 pages, 13 figures. Intended for submission to IEEE Transactions on Information Forensics and Security (TIFS)

R2 v1 2026-07-01T07:42:36.837Z