Novel Darknet traffic data synthesis using Generative Adversarial Networks enhanced with oscillatory Growing Cosine Unit activated convolution layers

Antony Pradeep C , Geraldine Bessie Amali D , Mathew Mithra Noel , Muhammad Rukunuddin Ghalib , Prabhakar Rontala Subramaniam , Chitra Venugopal
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引用次数: 0

Abstract

The Darknet is an anonymous, encrypted collection of websites, with a passive listening nature - accepting incoming packets, while not supporting outgoing packets. Thus, it can potentially host criminal or malicious activity and software, becoming a cyber security threat. Network Detection Systems are effective in identifying dark net traffic and mitigating its ill effects. However, capturing and extracting data from raw network traffic for training these systems can be time-intensive and costly. Using the CIC-Darknet 2020 dataset, this paper proposes using a Novel Generative Adversarial Networks (GAN) Architecture generating the required training and testing data for these systems. This uses a combination of Growing Cosine Unit (GCU) activated convolution layers and Dense layers for the Generator. Feature selection with statistical correlation methods is used to select the most relevant features. An independently trained Evaluator network is used to evaluate the generated data. The proposed system is compared to other established Tabular data GANs like Conditional Tabular GAN (CTGAN) and Copula GAN with similar parameters and on the same data. The Proposed GAN architecture outperforms CTGAN and CopulaGAN by 20 % and 10 % in ters of accuracy while also taking 90 % and 30 % less time to train respectively. Results from measuring similarity of data using the Inverted Kolmogorov - Smirnov D statistic also show significantly better results for the Proposed GAN Architecture. This shows significant promise in using Generative models to reduce the time and effort costs associated with collecting and formatting data to use in research and for training detection systems.

利用生成式对抗网络合成新的暗网流量数据,并通过振荡生长余弦单元激活卷积层进行增强
暗网是一个匿名、加密的网站集合,具有被动监听的性质--接受传入数据包,但不支持传出数据包。因此,它有可能容纳犯罪或恶意活动和软件,成为一种网络安全威胁。网络检测系统能有效识别暗网流量并减轻其不良影响。然而,从原始网络流量中捕获和提取数据来训练这些系统需要耗费大量的时间和成本。利用 CIC-Darknet 2020 数据集,本文建议使用新颖的生成对抗网络(GAN)架构生成这些系统所需的训练和测试数据。生成器结合使用了生长余弦单元(GCU)激活的卷积层和密集层。使用统计相关方法进行特征选择,以选出最相关的特征。独立训练的评估网络用于评估生成的数据。在相同的数据上,将提议的系统与其他已建立的表格式数据 GAN(如条件表格式 GAN (CTGAN) 和 Copula GAN)进行了比较,两者的参数相似。拟议的 GAN 架构在准确率方面分别比 CTGAN 和 CopulaGAN 高出 20% 和 10%,同时训练时间也分别减少了 90% 和 30%。使用反向 Kolmogorov - Smirnov D 统计量测量数据相似性的结果也显示,拟议 GAN 架构的结果明显更好。这表明,使用生成模型来减少与收集和格式化数据相关的时间和精力成本,以用于研究和训练检测系统,前景十分广阔。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
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