CRAIMar 13, 2023

Review on the Feasibility of Adversarial Evasion Attacks and Defenses for Network Intrusion Detection Systems

arXiv:2303.07003v19 citationsh-index: 15
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This review addresses the gap between theoretical adversarial attacks and practical applications in cybersecurity, which is incremental as it synthesizes existing work to identify unresolved issues.

The paper reviews the feasibility of adversarial evasion attacks and defenses for network intrusion detection systems, highlighting that existing research often focuses on theoretical attacks without addressing practical implementation challenges.

Nowadays, numerous applications incorporate machine learning (ML) algorithms due to their prominent achievements. However, many studies in the field of computer vision have shown that ML can be fooled by intentionally crafted instances, called adversarial examples. These adversarial examples take advantage of the intrinsic vulnerability of ML models. Recent research raises many concerns in the cybersecurity field. An increasing number of researchers are studying the feasibility of such attacks on security systems based on ML algorithms, such as Intrusion Detection Systems (IDS). The feasibility of such adversarial attacks would be influenced by various domain-specific constraints. This can potentially increase the difficulty of crafting adversarial examples. Despite the considerable amount of research that has been done in this area, much of it focuses on showing that it is possible to fool a model using features extracted from the raw data but does not address the practical side, i.e., the reverse transformation from theory to practice. For this reason, we propose a review browsing through various important papers to provide a comprehensive analysis. Our analysis highlights some challenges that have not been addressed in the reviewed papers.

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