Analyzing Darknet Traffic Through Machine Learning and Neucube Spiking Neural Networks

Iman Akour;Mohammad Alauthman;Khalid M. O. Nahar;Ammar Almomani;Brij B. Gupta
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Abstract

The rapidly evolving darknet enables a wide range of cybercrimes through anonymous and untraceable communication channels. Effective detection of clandestine darknet traffic is therefore critical yet immensely challenging. This research demonstrates how advanced machine learning and specialized deep learning techniques can significantly enhance darknet traffic analysis to strengthen cybersecurity. Combining diverse classifiers such as random forest and naïve Bayes with a novel spiking neural network architecture provides a robust foundation for identifying concealed threats. Evaluation on the CIC-Darknet2020 dataset establishes state-of-the-art results with 98% accuracy from the random forest model and 84.31% accuracy from the spiking neural network. This pioneering application of artificial intelligence advances the frontiers in analyzing the complex characteristics and behaviours of darknet communication. The proposed techniques lay the groundwork for improved threat intelligence, real-time monitoring, and resilient cyber defense systems against the evolving landscape of cyber threats.
利用机器学习和核脉冲神经网络分析暗网流量
快速发展的暗网通过匿名和无法追踪的通信渠道使各种网络犯罪成为可能。因此,对秘密暗网流量的有效检测至关重要,但也极具挑战性。本研究展示了先进的机器学习和专业的深度学习技术如何显著增强暗网流量分析,从而加强网络安全。将随机森林和naïve贝叶斯等多种分类器与新颖的峰值神经网络结构相结合,为识别隐藏威胁提供了坚实的基础。对CIC-Darknet2020数据集的评估建立了最先进的结果,随机森林模型的准确率为98%,峰值神经网络的准确率为84.31%。这种人工智能的开创性应用推动了分析暗网通信复杂特征和行为的前沿。所提出的技术为改进威胁情报、实时监控和弹性网络防御系统以应对不断变化的网络威胁格局奠定了基础。
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