TY - JOUR
T1 - Comprehensive Botnet Detection by Mitigating Adversarial Attacks, Navigating the Subtleties of Perturbation Distances and Fortifying Predictions with Conformal Layers
AU - Yumlembam, Rahul
AU - Issac, Biju
AU - Jacob, Seibu Mary
AU - Yang, Longzhi
N1 - Publisher Copyright:
© 2024 The Author(s)
PY - 2024/11/1
Y1 - 2024/11/1
N2 - Botnets are computer networks controlled by malicious actors that present significant cybersecurity challenges. They autonomously infect, propagate, and coordinate to conduct cybercrimes, necessitating robust detection methods. This research addresses the sophisticated adversarial manipulations posed by attackers, aiming to undermine machine learning-based botnet detection systems. We introduce a flow-based detection approach, leveraging machine learning and deep learning algorithms trained on the ISCX and ISOT datasets. The detection algorithms are optimized using the Genetic Algorithm (GA) and Particle Swarm Optimization (PSO) to obtain a baseline detection method. The Carlini & Wagner (C&W) and Generative Adversarial Network (GAN) attacks generate deceptive data with subtle perturbations, targeting each feature used for classification while preserving their semantic and syntactic relationships, which ensures that the adversarial samples retain meaningfulness and realism. An in-depth analysis of the required L2 distance from the original sample for the malware sample to misclassify is performed across various iteration checkpoints, showing different levels of misclassification at different L2 distances of the pertrub sample from the original sample. Our work delves into the vulnerability of various models, examining the transferability of adversarial examples from a Neural Network surrogate model to Tree-based algorithms. Subsequently, models that initially misclassified the perturbed samples are retrained, enhancing their resilience and detection capabilities. In the final phase, a conformal prediction layer is integrated, significantly rejecting incorrect predictions — 58.20% in the ISCX dataset and 98.94% in the ISOT dataset.
AB - Botnets are computer networks controlled by malicious actors that present significant cybersecurity challenges. They autonomously infect, propagate, and coordinate to conduct cybercrimes, necessitating robust detection methods. This research addresses the sophisticated adversarial manipulations posed by attackers, aiming to undermine machine learning-based botnet detection systems. We introduce a flow-based detection approach, leveraging machine learning and deep learning algorithms trained on the ISCX and ISOT datasets. The detection algorithms are optimized using the Genetic Algorithm (GA) and Particle Swarm Optimization (PSO) to obtain a baseline detection method. The Carlini & Wagner (C&W) and Generative Adversarial Network (GAN) attacks generate deceptive data with subtle perturbations, targeting each feature used for classification while preserving their semantic and syntactic relationships, which ensures that the adversarial samples retain meaningfulness and realism. An in-depth analysis of the required L2 distance from the original sample for the malware sample to misclassify is performed across various iteration checkpoints, showing different levels of misclassification at different L2 distances of the pertrub sample from the original sample. Our work delves into the vulnerability of various models, examining the transferability of adversarial examples from a Neural Network surrogate model to Tree-based algorithms. Subsequently, models that initially misclassified the perturbed samples are retrained, enhancing their resilience and detection capabilities. In the final phase, a conformal prediction layer is integrated, significantly rejecting incorrect predictions — 58.20% in the ISCX dataset and 98.94% in the ISOT dataset.
UR - http://www.scopus.com/inward/record.url?scp=85196411016&partnerID=8YFLogxK
U2 - 10.1016/j.inffus.2024.102529
DO - 10.1016/j.inffus.2024.102529
M3 - Article
AN - SCOPUS:85196411016
SN - 1566-2535
VL - 111
JO - Information Fusion
JF - Information Fusion
M1 - 102529
ER -