BARTPredict: Empowering IoT Security with LLM-Driven Cyber Threat Prediction
- URL: http://arxiv.org/abs/2501.01664v1
- Date: Fri, 03 Jan 2025 06:37:39 GMT
- Title: BARTPredict: Empowering IoT Security with LLM-Driven Cyber Threat Prediction
- Authors: Alaeddine Diaf, Abdelaziz Amara Korba, Nour Elislem Karabadji, Yacine Ghamri-Doudane,
- Abstract summary: The integration of Internet of Things (IoT) technology has led to operational advancements, but it has also introduced new vulnerabilities to cybersecurity threats.
Intrusion detection systems are often reactive, triggered by specific patterns or anomalies observed within the network.
This paper proposes an innovative intrusion prediction framework empowered by Pre-trained Large Language Models (LLMs)
- Score: 4.836070911511429
- License:
- Abstract: The integration of Internet of Things (IoT) technology in various domains has led to operational advancements, but it has also introduced new vulnerabilities to cybersecurity threats, as evidenced by recent widespread cyberattacks on IoT devices. Intrusion detection systems are often reactive, triggered by specific patterns or anomalies observed within the network. To address this challenge, this work proposes a proactive approach to anticipate and preemptively mitigate malicious activities, aiming to prevent potential damage before it occurs. This paper proposes an innovative intrusion prediction framework empowered by Pre-trained Large Language Models (LLMs). The framework incorporates two LLMs: a fine-tuned Bidirectional and AutoRegressive Transformers (BART) model for predicting network traffic and a fine-tuned Bidirectional Encoder Representations from Transformers (BERT) model for evaluating the predicted traffic. By harnessing the bidirectional capabilities of BART the framework then identifies malicious packets among these predictions. Evaluated using the CICIoT2023 IoT attack dataset, our framework showcases a notable enhancement in predictive performance, attaining an impressive 98% overall accuracy, providing a powerful response to the cybersecurity challenges that confront IoT networks.
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