基于贝叶斯深度学习的集成网络入侵检测方案

Jielun Zhang, Fuhao Li, Feng Ye
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引用次数: 17

摘要

网络入侵检测是网络安全的基础,对防止系统受到恶意网络流量的攻击起着重要的作用。与传统的入侵检测方案相比,近年来基于人工智能(AI)的入侵检测系统提供了简单、准确的入侵检测,但由于人工智能算法中的模型即使在不确定的情况下也必须对每个传入实例输出预测结果,因此检测性能可能不可靠。为了解决这个问题,我们建议采用贝叶斯深度学习,特别是贝叶斯卷积神经网络来构建入侵检测模型。进一步提出了一种基于集成的检测方案,提高了检测性能。使用两个开放数据集(即NSL-KDD和UNSW-NB15)来评估所提出的方案。相比之下,卷积神经网络和支持向量机被实现为基线IDS(即CNN-IDS和SVM-IDS)。评估结果表明,采用本文提出的t集合检测方案,BCNN-IDS可以显著提高检测精度,降低虚警率。
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An Ensemble-based Network Intrusion Detection Scheme with Bayesian Deep Learning
Network intrusion detection is the fundamental of the Cybersecurity which plays an important role in preventing the systems away from malicious network traffic. Recent Artificial Intelligence (AI) based intrusion detection systems provide simple and accurate intrusion detection compared with the conventional intrusion detection schemes, however, the detection performance may not be reliable because the models in the AI algorithms must output a prediction result for each incoming instance even when the models are not confident. To tackle the issue, we propose to adopt Bayesian Deep Learning, specifically, Bayesian Convolutional Neural Network, to build intrusion detection models. Moreover, an ensemble-based detection scheme is further proposed to enhance the detection performance. Two open datasets (i.e., NSL-KDD and UNSW-NB15) are used to evaluate the proposed schemes. In comparison, Convolutional Neural Network and Support Vector Machine are implemented as baseline IDS (i.e., CNN-IDS and SVM-IDS). The evaluation results demonstrate that the proposed BCNN-IDS can significantly boost the detection accuracy and reduce the false alarm rate by adopting the proposed T-ensemble detection scheme.
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