WANHEDA:一个基于机器学习的DDoS检测系统

A.U Sudugala, W.H Chanuka, A.M.N Eshan, U. Bandara, K. Abeywardena
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引用次数: 7

摘要

在当今世界,计算机通信几乎无处不在,其中大多数都连接到世界上最大的网络——互联网。使用互联网是有危险的,因为大量的网络攻击是为了攻击连接到互联网的系统的机密性、完整性和可用性。分布式拒绝服务(DDoS)攻击是计算机网络最突出的威胁之一。它们被设计用来攻击系统的可用性。许多用户和isp经常受到这些攻击的目标和影响。尽管新的保护技术不断被提出,但这一巨大威胁仍在迅速增长。大多数DDoS攻击是无法检测到的,因为它们充当合法流量。使用入侵检测系统(ids)可以部分克服这种情况。有些高级攻击没有适当的文档记录来检测。在本文中,作者提出了一种基于机器学习(ML)的DDoS检测机制,该机制具有更高的准确性和低误报率。该方法基于先前从网络流量样本中提取的签名进行归纳。作者使用四种不同的基准数据集和四种机器学习算法进行实验,以解决四种最有害的DDoS攻击向量。作者实现了最大的准确性,并将结果与其他适用的机器学习算法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
WANHEDA: A Machine Learning Based DDoS Detection System
In today's world computer communication is used almost everywhere and majority of them are connected to the world's largest network, the Internet. There is danger in using internet due to numerous cyber-attacks which are designed to attack Confidentiality, Integrity and Availability of systems connected to the internet. One of the most prominent threats to computer networking is Distributed Denial of Service (DDoS) Attack. They are designed to attack availability of the systems. Many users and ISPs are targeted and affected regularly by these attacks. Even though new protection technologies are continuously proposed, this immense threat continues to grow rapidly. Most of the DDoS attacks are undetectable because they act as legitimate traffic. This situation can be partially overcome by using Intrusion Detection Systems (IDSs). There are advanced attacks where there is no proper documented way to detect. In this paper authors present a Machine Learning (ML) based DDoS detection mechanism with improved accuracy and low false positive rates. The proposed approach gives inductions based on signatures previously extracted from samples of network traffic. Authors perform the experiments using four distinct benchmark datasets, four machine learning algorithms to address four of the most harmful DDoS attack vectors. Authors achieved maximum accuracy and compared the results with other applicable machine learning algorithms.
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