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Anomaly-Based Network Intrusion Detection Using Wavelets and Adversarial Autoencoders

机译:基于异常的网络入侵检测使用小波和对抗性自动化器

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The number of intrusions and attacks against data networks and networked systems increases constantly, while encryption has made it more difficult to inspect network traffic and classify it as malicious. In this paper, an anomaly-based intrusion detection system using Haar wavelet transforms in combination with an adversarial autoencoder was developed for detecting malicious TLS-encrypted Internet traffic. Data containing legitimate, as well as advanced malicious traffic was collected from a large-scale cyber exercise and used in the analysis. Based on the findings and domain expertise, a set of features for distinguishing modern malware from packet timing analysis were chosen and evaluated. Performance of the adversarial autoencoder was compared with a traditional autoencoder. The results indicate that the adversarial model performs better than the traditional autoencoder. In addition, a machine learning pipeline capable of analyzing traffic in near real time was developed for data analysis.
机译:对数据网络和联网系统的入侵和攻击的数量不断增加,而加密使得检查网络流量并将其分类为恶意更加困难。本文开发了一种基于异常的入侵检测系统,使用HAAR小波变换与对抗AutoEncoder组合用于检测恶意TLS加密的互联网流量。包含合法的数据以及高级网络运动中收集了高级恶意流量,并在分析中使用。基于调查结果和域专业知识,选择并评估了一组用于区分现代恶意软件的功能和评估。与传统的AutoEncoder进行了比较了对手AutoEncoder的性能。结果表明,对手模型表现优于传统的AutoEncoder。此外,为数据分析开发了一种能够在近实时分析流量的机器学习管道。

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