DOC-NAD:用于网络异常检测的混合深度单类分类器

Mohanad Sarhan, Gayan K. Kulatilleke, Wai Weng Lo, S. Layeghy, Marius Portmann
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引用次数: 0

摘要

机器学习(ML)方法已被用于增强网络入侵检测系统(nids)的检测能力。最近的工作通过以下二进制和多类网络异常检测任务取得了近乎完美的性能。这样的系统依赖于训练阶段网络数据类(良性和恶意)的可用性。然而,在大多数组织中,由于安全控制防止已知恶意流量渗透到其网络,攻击数据样本通常具有挑战性。因此,本文提出了一种仅对良性网络数据样本进行训练的深度单类(Deep One-Class, DOC)分类器,用于网络入侵检测。新的单类分类架构由基于直方图的深度前馈分类器组成,以提取有用的网络数据特征并使用高效的离群点检测。DOC分类器已经使用两个基准NIDS数据集进行了广泛的评估。结果证明了它在检测和误报率方面优于当前最先进的单类分类器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DOC-NAD: A Hybrid Deep One-class Classifier for Network Anomaly Detection
Machine Learning (ML) approaches have been used to enhance the detection capabilities of Network Intrusion Detection Systems (NIDSs). Recent work has achieved near-perfect performance by following binary- and multi-class network anomaly detection tasks. Such systems depend on the availability of both (benign and malicious) network data classes during the training phase. However, attack data samples are often challenging to collect in most organisations due to security controls preventing the penetration of known malicious traffic to their networks. Therefore, this paper proposes a Deep One-Class (DOC) classifier for network intrusion detection by only training on benign network data samples. The novel one-class classification architecture consists of a histogram-based deep feed-forward classifier to extract useful network data features and use efficient outlier detection. The DOC classifier has been extensively evaluated using two benchmark NIDS datasets. The results demonstrate its superiority over current state-of-the-art one-class classifiers in terms of detection and false positive rates.
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