Implementation of Network Attack Detection using Convolutional Neural Network

Youssef F. Sallam, HossamEl-din H. Ahmed, A. Saleeb, Nirmeen A. El-Bahnasawy, F. El-Samie
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引用次数: 1

Abstract

The Internet obviously has a major impact on the global economy and human life every day. This boundless use pushes the attack programmers to attack the data frameworks on the Internet. Web attacks influence the reliability of the Internet and its administrations. These attacks are classified as User-to-Root (U2R), Remote-to-Local (R2L), Denial-of-Service (DoS) and Probing (Probe). Subsequently, making sure about web framework security and protecting data are pivotal. The conventional layers of safeguards like antivirus scanners, firewalls and proxies, which are applied to treat the security weaknesses are insufficient. So, Intrusion Detection Systems (IDSs) are utilized to screen PC and data frameworks for security shortcomings. IDS adds more effectiveness in securing networks against attacks. This paper presents an IDS model based on Deep Learning (DL) with Convolutional Neural Network (CNN) hypothesis. The model has been evaluated on the NSLKDD dataset. It has been trained by Kddtrain+ and tested twice, once using kddtrain+ and the other using kddtest+. The achieved test accuracies are 99.7% and 98.43% with 0.002 and 0.02 wrong alert rates for the two test scenarios, respectively.
利用卷积神经网络实现网络攻击检测
显然,互联网每天都对全球经济和人类生活产生重大影响。这种无限的使用促使攻击程序员攻击Internet上的数据框架。Web攻击会影响Internet及其管理的可靠性。这些攻击分为用户到根(U2R)、远程到本地(R2L)、拒绝服务(DoS)和探测(Probe)。因此,确保web框架的安全性和数据保护至关重要。传统的防护层,如防病毒扫描仪、防火墙和代理,用于处理安全漏洞是不够的。因此,入侵检测系统(ids)被用于检测PC和数据框架的安全缺陷。IDS提高了保护网络免受攻击的有效性。本文提出了一种基于卷积神经网络(CNN)假设的深度学习(DL)入侵检测模型。该模型已在NSLKDD数据集上进行了评估。它已经通过Kddtrain+进行了训练,并进行了两次测试,一次使用Kddtrain+,另一次使用kddtest+。对于两个测试场景,实现的测试准确率分别为99.7%和98.43%,错误警报率分别为0.002和0.02。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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