随机森林分类器在分布式拒绝服务攻击预防和检测中的应用

Soumyajit Das, Zeeshaan Dayam, P. S. Chatterjee
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引用次数: 0

摘要

机器学习中的一个分类问题是发现分布式拒绝服务(DDos)攻击的问题。拒绝服务(DoS)攻击本质上是从单一来源发起的蓄意攻击,其隐含意图是使目标应用程序不可用。攻击者通常以消耗所有可用的网络带宽为目标,从而阻止授权用户访问系统资源并拒绝他们访问。与DoS攻击相反,DDoS攻击包括攻击者使用的几个源来发起攻击。在7层OSI体系结构的网络层、传输层、表示层和应用层,DDoS攻击是最常见的。在最著名的标准数据集和多元回归分析的帮助下,我们在这项工作中创建了一个机器学习模型,可以根据流量预测DDoS和bot攻击。
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Application of Random Forest Classifier for Prevention and Detection of Distributed Denial of Service Attacks
A classification issue in machine learning is the issue of spotting Distributed Denial of Service (DDos) attacks. A Denial of Service (DoS) assault is essentially a deliberate attack launched from a single source with the implied intent of rendering the target's application unavailable. Attackers typically aims to consume all available network bandwidth in order to accomplish this, which inhibits authorized users from accessing system resources and denies them access. DDoS assaults, in contrast to DoS attacks, include several sources being used by the attacker to launch an attack. At the network, transportation, presentation, and application layers of a 7-layer OSI architecture, DDoS attacks are most frequently observed. With the help of the most well-known standard dataset and multiple regression analysis, we have created a machine learning model in this work that can predict DDoS and bot assaults based on traffic.
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