Enhancing IoT Network Security through Adaptive Curriculum Learning and XAI
- URL: http://arxiv.org/abs/2501.11618v1
- Date: Mon, 20 Jan 2025 17:32:01 GMT
- Title: Enhancing IoT Network Security through Adaptive Curriculum Learning and XAI
- Authors: Sathwik Narkedimilli, Sujith Makam, Amballa Venkata Sriram, Sai Prashanth Mallellu, MSVPJ Sathvik, Ranga Rao Venkatesha Prasad,
- Abstract summary: This study presents a scalable and lightweight curriculum learning framework enhanced with Explainable AI (XAI) techniques, including LIME.
The proposed model employs novel neural network architecture utilized at every stage of Curriculum Learning to efficiently capture and focus on both short- and long-term temporal dependencies.
Experimental results demonstrate 98% accuracy on CIC-IoV-2024 and CIC-APT-IIoT-2024 datasets and 97% on EDGE-IIoT.
- Score: 0.3958317527488535
- License:
- Abstract: To address the critical need for secure IoT networks, this study presents a scalable and lightweight curriculum learning framework enhanced with Explainable AI (XAI) techniques, including LIME, to ensure transparency and adaptability. The proposed model employs novel neural network architecture utilized at every stage of Curriculum Learning to efficiently capture and focus on both short- and long-term temporal dependencies, improve learning stability, and enhance accuracy while remaining lightweight and robust against noise in sequential IoT data. Robustness is achieved through staged learning, where the model iteratively refines itself by removing low-relevance features and optimizing performance. The workflow includes edge-optimized quantization and pruning to ensure portability that could easily be deployed in the edge-IoT devices. An ensemble model incorporating Random Forest, XGBoost, and the staged learning base further enhances generalization. Experimental results demonstrate 98% accuracy on CIC-IoV-2024 and CIC-APT-IIoT-2024 datasets and 97% on EDGE-IIoT, establishing this framework as a robust, transparent, and high-performance solution for IoT network security.
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