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Deep and Machine Learning Approaches for Anomaly-Based Intrusion Detection of Imbalanced Network Traffic

机译:基于深度和机器学习的不平衡网络流量基于异常的入侵检测方法

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Recently, cybersecurity threats have increased dramatically, and the techniques used by the attackers continue to evolve and become ingenious during the attack. Moreover, the complexity and frequent occurrence of imbalanced class distributions in most datasets indicate the need for extra research efforts. The objective of this article is to utilize various techniques for handling imbalanced datasets to build an effective intrusion detection system from the up-to-date Coburg Intrusion Detection Dataset-001 (CIDDS-001) dataset. The effectiveness of sampling methods on CIDDS-001 is carefully studied and experimentally evaluated through deep neural networks, random forest, voting, variational autoencoder, and stacking machine learning classifiers. The proposed system was able to detect attacks with up to 99.99% accuracy when handling the imbalanced class distribution with fewer samples, making it more convenient in real-time data fusion problems that target data classification.
机译:最近,网络安全威胁急剧增加,攻击者使用的技术在攻击过程中不断发展并变得独具匠心。此外,大多数数据集中的类分布不平衡的复杂性和频繁发生表明需要额外的研究工作。本文的目的是利用各种技术来处理不平衡的数据集,以从最新的Coburg入侵检测数据集001(CIDDS-001)数据集中构建有效的入侵检测系统。通过深度神经网络,随机森林,投票,变分自动编码器和堆叠机器学习分类器,对CIDDS-001上的抽样方法的有效性进行了仔细的研究和实验评估。当使用更少的样本处理不平衡的类分布时,所提出的系统能够以高达99.99%的准确率检测攻击,从而使针对数据分类的实时数据融合问题更加方便。

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