An anomaly-based network intrusion detection system using Deep learning

Nguyen Thanh Van, T. N. Thinh, Le Thanh Sach
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引用次数: 78

Abstract

Recently, anomaly-based intrusion detection techniques are valuable methodology to detect both known as well as unknown/new attacks, so they can cope with the diversity of the attacks and the constantly changing nature of network attacks. There are many problems need to be considered in anomaly-based network intrusion detection system (NIDS), such as ability to adapt to dynamic network environments, unavailability of labeled data, false positive rate. This paper, we use Deep learning techniques to implement an anomaly-based NIDS. These techniques show the sensitive power of generative models with good classification, capabilities to deduce part of its knowledge from incomplete data and the adaptability. Our experiments with KDDCup99 network traffic connections show that our work is effective to exact detect in anomaly-based NIDS and classify intrusions into five groups with the accuracy based on network data sources.
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基于异常的深度学习网络入侵检测系统
近年来,基于异常的入侵检测技术是一种有价值的方法,既可以检测已知的攻击,也可以检测未知的/新的攻击,因此它可以应对攻击的多样性和网络攻击的不断变化的性质。基于异常的网络入侵检测系统需要考虑对动态网络环境的适应能力、标记数据的不可用性、误报率等问题。本文,我们使用深度学习技术来实现基于异常的NIDS。这些技术显示了生成模型的敏感能力,具有良好的分类能力,从不完整的数据中推断出部分知识的能力和适应性。基于KDDCup99网络流量连接的实验表明,我们的工作可以有效地准确检测基于异常的NIDS,并根据网络数据源将入侵分为五类。
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