DAHID: Domain Adaptive Host-based Intrusion Detection

Oluwagbemiga Ajayi, A. Gangopadhyay
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引用次数: 7

Abstract

Cybersecurity is becoming increasingly important with the explosion of attack surfaces as more cyber-physical systems are being deployed. It is impractical to create models with acceptable performance for every single computing infrastructure and the various attack scenarios due to the cost of collecting labeled data and training models. Hence it is important to be able to develop models that can take advantage of knowledge available in an attack source domain to improve performance in a target domain with little domain specific data.In this work we proposed Domain Adaptive Host-based Intrusion Detection DAHID; an approach for detecting attacks in multiple domains for cybersecurity. Specifically, we implemented a deep learning model which utilizes a substantially smaller amount of target domain data for host-based intrusion detection.In our experiments, we used two datasets from Australian Defense Force Academy; ADFA-WD as the source domain and ADFA-WD:SAA as the target domain datasets. We recorded a significant improvement in Area Under Curve AUC from 83% to 91%, when we fine-tuned a deep learning model trained on ADFA-WD with as little as 20% of ADFA-WD:SAA. Our result shows transfer learning can help to alleviate the need of huge domain specific dataset in building host-based intrusion detection models.
DAHID:基于域自适应主机的入侵检测
随着越来越多的网络物理系统被部署,攻击面呈爆炸式增长,网络安全变得越来越重要。由于收集标记数据和训练模型的成本,为每个计算基础设施和各种攻击场景创建具有可接受性能的模型是不切实际的。因此,能够开发能够利用攻击源领域中可用知识的模型,以使用很少的领域特定数据来提高目标领域中的性能,这一点非常重要。本文提出了基于域自适应主机的入侵检测(DAHID);一种面向网络安全的多域攻击检测方法。具体来说,我们实现了一个深度学习模型,该模型利用了大量较少的目标域数据进行基于主机的入侵检测。在我们的实验中,我们使用了来自澳大利亚国防军事学院的两个数据集;以ADFA-WD为源域,以ADFA-WD:SAA为目标域数据集。当我们对ADFA-WD训练的深度学习模型进行微调时,我们记录到曲线下面积AUC从83%显著提高到91%,只有20%的ADFA-WD:SAA。研究结果表明,迁移学习可以缓解构建基于主机的入侵检测模型时对特定领域海量数据的需求。
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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