Intrusion Detection Systems (IDS) are crucial components of network security, yet traditional IDS models often fail to cope with rapidly evolving adversarial attacks that exploit their static nature. This study proposes a novel approach, Evolving Adversarial Training (EAT), to enhance the adaptability and robustness of AI-powered IDS against dynamic threats. The EAT framework integrates continuous model evolution with advanced adversarial training techniques, enabling the IDS to dynamically adjust to new attack patterns. Experimental results demonstrate that the EAT framework significantly enhances IDS performance, leading to increased detection accuracy and reduced false positive rates compared to conventional methods. These findings emphasize the potential of EAT in fortifying network defenses against evolving cyber threats, offering a promising avenue for future research in scalable and adaptive IDS solutions that can effectively combat the complexities of modern cyber adversaries. The research explores three key objectives: dynamic adaptation and adversarial training, continuous learning and enhanced threat detection, and robustness and generalization. By focusing on these objectives, the study aims to develop AI-powered IDS that can effectively navigate the ever-changing cyber threat landscape. The research methodology includes data collection, model architecture design, training and evaluation, continuous learning, simulation, and real-world testing, all aimed at enhancing the resilience of AI-powered IDS against adversarial attacks. By systematically following this framework, the study intends to enhance the security system of IDS through the effective implementation of EAT.
Published in | American Journal of Computer Science and Technology (Volume 7, Issue 3) |
DOI | 10.11648/j.ajcst.20240703.16 |
Page(s) | 115-121 |
Creative Commons |
This is an Open Access article, distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution and reproduction in any medium or format, provided the original work is properly cited. |
Copyright |
Copyright © The Author(s), 2024. Published by Science Publishing Group |
Intrusion Detection Systems (IDS), Machine Learning (ML), Artificial Intelligence (AI), Evolving Adversarial Training (EAT), Deep Learning, Cybersecurity, Deep Neural Networks (DNN)
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APA Style
Affan, A. M. (2024). Evolving Adversarial Training (EAT) for AI-Powered Intrusion Detection Systems (IDS). American Journal of Computer Science and Technology, 7(3), 115-121. https://doi.org/10.11648/j.ajcst.20240703.16
ACS Style
Affan, A. M. Evolving Adversarial Training (EAT) for AI-Powered Intrusion Detection Systems (IDS). Am. J. Comput. Sci. Technol. 2024, 7(3), 115-121. doi: 10.11648/j.ajcst.20240703.16
AMA Style
Affan AM. Evolving Adversarial Training (EAT) for AI-Powered Intrusion Detection Systems (IDS). Am J Comput Sci Technol. 2024;7(3):115-121. doi: 10.11648/j.ajcst.20240703.16
@article{10.11648/j.ajcst.20240703.16, author = {Ahmed Muktadir Affan}, title = {Evolving Adversarial Training (EAT) for AI-Powered Intrusion Detection Systems (IDS) }, journal = {American Journal of Computer Science and Technology}, volume = {7}, number = {3}, pages = {115-121}, doi = {10.11648/j.ajcst.20240703.16}, url = {https://doi.org/10.11648/j.ajcst.20240703.16}, eprint = {https://article.sciencepublishinggroup.com/pdf/10.11648.j.ajcst.20240703.16}, abstract = {Intrusion Detection Systems (IDS) are crucial components of network security, yet traditional IDS models often fail to cope with rapidly evolving adversarial attacks that exploit their static nature. This study proposes a novel approach, Evolving Adversarial Training (EAT), to enhance the adaptability and robustness of AI-powered IDS against dynamic threats. The EAT framework integrates continuous model evolution with advanced adversarial training techniques, enabling the IDS to dynamically adjust to new attack patterns. Experimental results demonstrate that the EAT framework significantly enhances IDS performance, leading to increased detection accuracy and reduced false positive rates compared to conventional methods. These findings emphasize the potential of EAT in fortifying network defenses against evolving cyber threats, offering a promising avenue for future research in scalable and adaptive IDS solutions that can effectively combat the complexities of modern cyber adversaries. The research explores three key objectives: dynamic adaptation and adversarial training, continuous learning and enhanced threat detection, and robustness and generalization. By focusing on these objectives, the study aims to develop AI-powered IDS that can effectively navigate the ever-changing cyber threat landscape. The research methodology includes data collection, model architecture design, training and evaluation, continuous learning, simulation, and real-world testing, all aimed at enhancing the resilience of AI-powered IDS against adversarial attacks. By systematically following this framework, the study intends to enhance the security system of IDS through the effective implementation of EAT. }, year = {2024} }
TY - JOUR T1 - Evolving Adversarial Training (EAT) for AI-Powered Intrusion Detection Systems (IDS) AU - Ahmed Muktadir Affan Y1 - 2024/09/29 PY - 2024 N1 - https://doi.org/10.11648/j.ajcst.20240703.16 DO - 10.11648/j.ajcst.20240703.16 T2 - American Journal of Computer Science and Technology JF - American Journal of Computer Science and Technology JO - American Journal of Computer Science and Technology SP - 115 EP - 121 PB - Science Publishing Group SN - 2640-012X UR - https://doi.org/10.11648/j.ajcst.20240703.16 AB - Intrusion Detection Systems (IDS) are crucial components of network security, yet traditional IDS models often fail to cope with rapidly evolving adversarial attacks that exploit their static nature. This study proposes a novel approach, Evolving Adversarial Training (EAT), to enhance the adaptability and robustness of AI-powered IDS against dynamic threats. The EAT framework integrates continuous model evolution with advanced adversarial training techniques, enabling the IDS to dynamically adjust to new attack patterns. Experimental results demonstrate that the EAT framework significantly enhances IDS performance, leading to increased detection accuracy and reduced false positive rates compared to conventional methods. These findings emphasize the potential of EAT in fortifying network defenses against evolving cyber threats, offering a promising avenue for future research in scalable and adaptive IDS solutions that can effectively combat the complexities of modern cyber adversaries. The research explores three key objectives: dynamic adaptation and adversarial training, continuous learning and enhanced threat detection, and robustness and generalization. By focusing on these objectives, the study aims to develop AI-powered IDS that can effectively navigate the ever-changing cyber threat landscape. The research methodology includes data collection, model architecture design, training and evaluation, continuous learning, simulation, and real-world testing, all aimed at enhancing the resilience of AI-powered IDS against adversarial attacks. By systematically following this framework, the study intends to enhance the security system of IDS through the effective implementation of EAT. VL - 7 IS - 3 ER -