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A novel feature extraction methodology using Siamese convolutional neural networks for intrusion detection

机译:一种新颖的特征提取方法,使用暹罗卷积神经网络进行入侵检测

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Intrusion detection systems (IDS) can play a significant role in detecting security threats or malicious attacks that aim to steal information and/or corrupt network protocols. To deal with the dynamic and complex nature of cyber-attacks, advanced intelligent tools have been applied resulting into powerful and automated IDS that rely on the latest advances of machine learning (ML) and deep learning (DL). Most of the reported effort has been devoted on building complex ML/DL architectures adopting a brute force approach towards the maximization of their detection capacity. However, just a limited number of studies have focused on the identification or extraction of user-friendly risk indicators that could be easily used by security experts. Many papers have explored various dimensionality reduction algorithms, however a large number of selected features is still required to detect the attacks successfully, which humans cannot intuitively or immediately understand. To enhance user’s trust and understanding on data without sacrificing on accuracy, this paper contributes to the transformation of the available data collected by IDS into a single actionable and easy-to-understand risk indicator. To achieve this, a novel feature extraction pipeline was implemented consisting of the following components: (i) a fuzzy allocation scheme that transforms raw data to fuzzy class memberships, (ii) a novel modality transformation mechanism for converting feature vectors to images (Vec2im) and (iii) a dimensionality reduction module that makes use of Siamese convolutional neural networks that finally reduces the input data dimensionality into a 1-d feature space. The performance of the proposed methodology was validated with respect to detection accuracy, dimensionality reduction performance and execution time on the NSL-KDD dataset via a thorough comparative analysis that demonstrated its effectiveness (86.64% testing accuracy using only one feature) over a number of well-known feature selection (FS) and extraction techniques. The output of the proposed feature extraction pipeline could be potentially used by security experts as an indicator of malicious activity, whereas the generated images could be further utilized and/or integrated as a visual analytics tool in existing IDS.
机译:入侵检测系统(IDS)可以在检测旨在窃取信息和/或损坏网络协议的安全威胁或恶意攻击方面发挥重要作用。为了处理网络攻击的动态和复杂性质,已经应用了先进的智能工具,从而产生了强大的自动化ID,依赖于机器学习(ML)和深度学习(DL)的最新进展。大多数报告的努力都致力于建立复杂的ML / DL架构,采用严重力探讨其检测能力的最大化。然而,只有有限数量的研究侧重于安全专家可以轻松使用的用户友好的风险指标的识别或提取。许多论文探索了各种维度减少算法,但是仍然需要大量选择的特征来成功检测攻击,这是人类无法直观或立即理解的。为了增强用户的信任和对数据的理解而不牺牲准确性,有助于将IDS收集的可用数据转换为单个可操作和易于理解的风险指标。为此,实现了一种新颖的特征提取管道,由以下组件组成:(i)将原始数据转换为模糊类成员资格的模糊分配方案,(ii)用于将特征向量转换为图像的新型模型转换机制(Vec2im) (iii)维度减少模块,它利用暹罗卷积神经网络,最终将输入数据维度降低到1-D特征空间中。通过彻底的比较分析,在NSL-KDD数据集上的检测精度,维数减少性能和执行时间上验证了所提出的方法的性能,这些比较分析在许多井中展示其有效性(仅使用一个特征的测试精度86.64%的测试精度) - 已知的功能选择(FS)和提取技术。拟议特征提取管道的输出可以被安全专家作为恶意活动的指标,而可以进一步利用和/或作为现有ID中的视觉分析工具进行进一步使用和/或集成所生成的图像。

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