人工神经网络在探测攻击检测中的应用

I. Ahmad, A. Abdullah, Abdullah S Alghamdi
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引用次数: 57

摘要

预防任何类型的网络攻击都是必不可少的,因为一次攻击就可能破坏计算机和网络系统的安全。阻止这种攻击完全取决于对它们的探测。检测是任何安全工具的主要组成部分,如入侵检测系统(IDS)、入侵防御系统(IPS)、自适应安全联盟(ASA)、检查点和防火墙。因此,在本文中,我们正在考虑一种探测攻击的方法的可行性,这些攻击是计算机网络系统中其他攻击的基础。我们的方法采用了一种主要用于检测安全攻击的监督神经网络现象。该系统采用多层感知器(MLP)结构和弹性反向传播方法进行训练和测试。系统使用来自Kddcup99数据集的采样数据,该数据集是评估安全检测机制的标准攻击数据库。所开发的系统应用于不同的探测攻击。此外,将其性能与其他神经网络方法进行了比较,结果表明我们的方法在假阳性、假阴性和检出率方面都更加精确和准确。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of artificial neural network in detection of probing attacks
The prevention of any type of cyber attack is indispensable because a single attack may break the security of computer and network systems. The hindrance of such attacks is entirely dependent on their detection. The detection is a major part of any security tool such as Intrusion Detection System (IDS), Intrusion Prevention System (IPS), Adaptive Security Alliance (ASA), check points and firewalls. Consequently, in this paper, we are contemplating the feasibility of an approach to probing attacks that are the basis of others attacks in computer network systems. Our approach adopts a supervised neural network phenomenon that is majorly used for detecting security attacks. The proposed system takes into account Multiple Layered Perceptron (MLP) architecture and resilient backpropagation for its training and testing. The system uses sampled data from Kddcup99 dataset, an attack database that is a standard for evaluating the security detection mechanisms. The developed system is applied to different probing attacks. Furthermore, its performance is compared to other neural networks' approaches and the results indicate that our approach is more precise and accurate in case of false positive, false negative and detection rate.
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