Intelligent IoT Attack Detection Design via ODLLM with Feature Ranking-based Knowledge Base
This addresses cybersecurity challenges for IoT systems, though it appears incremental as it builds on existing ODLLM and feature ranking approaches.
The paper tackles DDoS attack detection in IoT networks by proposing a framework using On-Device Large Language Models (ODLLMs) with feature ranking and knowledge base integration, achieving superior accuracy across diverse attack types in edge computing environments.
The widespread adoption of Internet of Things (IoT) devices has introduced significant cybersecurity challenges, particularly with the increasing frequency and sophistication of Distributed Denial of Service (DDoS) attacks. Traditional machine learning (ML) techniques often fall short in detecting such attacks due to the complexity of blended and evolving patterns. To address this, we propose a novel framework leveraging On-Device Large Language Models (ODLLMs) augmented with fine-tuning and knowledge base (KB) integration for intelligent IoT network attack detection. By implementing feature ranking techniques and constructing both long and short KBs tailored to model capacities, the proposed framework ensures efficient and accurate detection of DDoS attacks while overcoming computational and privacy limitations. Simulation results demonstrate that the optimized framework achieves superior accuracy across diverse attack types, especially when using compact models in edge computing environments. This work provides a scalable and secure solution for real-time IoT security, advancing the applicability of edge intelligence in cybersecurity.