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A Machine Learning Approach for DDoS (Distributed Denial of Service) Attack Detection Using Multiple Linear Regression

机译:一种使用多个线性回归的DDOS(分布式拒绝服务)攻击检测的机器学习方法

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The problem of identifying Distributed Denial of Service (DDos) attacks is fundamentally a classification problem in machine learning. In relevance to Cloud Computing, the task of identification of DDoS attacks is a significantly challenging problem because of computational complexity that has to be addressed. Fundamentally, a Denial of Service (DoS) attack is an intentional attack attempted by attackers from single source which has an implicit intention of making an application unavailable to the target stakeholder. For this to be achieved, attackers usually stagger the network bandwidth, halting system resources, thus causing denial of access for legitimate users. Contrary to DoS attacks, in DDoS attacks, the attacker makes use of multiple sources to initiate an attack. DDoS attacks are most common at network, transportation, presentation and application layers of a seven-layer OSI model. In this paper, the research objective is to study the problem of DDoS attack detection in a Cloud environment by considering the most popular CICIDS 2017 benchmark dataset and applying multiple regression analysis for building a machine learning model to predict DDoS and Bot attacks through considering a Friday afternoon traffic logfile.
机译:识别分布式拒绝服务(DDOS)攻击的问题基本上是机器学习中的分类问题。与云计算有关,由于必须解决的计算复杂性,识别DDOS攻击的任务是一个显着挑战性问题。从根本上讲,拒绝服务(DOS)攻击是由单一来源的攻击者尝试的故意攻击,这些攻击者具有隐含意图对目标利益相关者无法提供申请。为此,攻击者通常错开网络带宽,停止系统资源,从而导致拒绝合法用户的访问。与DOS攻击相反,在DDOS攻击中,攻击者利用多种来源来启动攻击。 DDOS攻击在七层OSI模型的网络,运输,呈现和应用层中最常见。在本文中,研究目的是考虑最受欢迎的Cicids 2017基准数据集并应用用于构建机器学习模型的多元回归分析来研究DDOS攻击检测的问题,以便通过考虑周五来预测DDOS和BOT攻击的多元回归分析下午流量日志文件。

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