基于MKL算法的DDoS攻击检测

Deepa V, B. Sivakumar
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引用次数: 0

摘要

软件定义网络(SDN)是虚拟设计和构建硬件网络组件的一种很好的方法和框架。在传统的网络领域,自动化是固定的,不可能改变网络连接。SDN具有动态自动化功能,但仍然容易受到DDoS攻击。随着检测准确率的提高,针对DDoS的入侵检测系统在检测入侵和降低虚警率方面仍然面临挑战。在网络中,发现入侵的最有效方法是通过部署机器学习(ML) - IDS和深度学习(DL) - IDS系统。本文基于深度学习提出了一种有效的无监督层次的浅、深多核层次算法。为了检测恶意流量,使用MKL算法在DDoS攻击数据库上进行实验,并将最终结果与所开发的方法进行关联。实验结果表明,该方法具有较高的准确率和检出率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of DDoS Attack using Multiple Kernel Level (MKL) Algorithm
Software-defined networking (SDN) is a good approach, framework for virtually designing and building hardware network components. In the traditional network domain, fixed automation is made, and it is not possible to change the network connections. SDN has dynamic automation but is still exposed to DDoS attacks. With rising detection accuracy, IDS (Intrusion Detection System) against DDoS still faces provocation in detecting the intrusions and reducing the false alarm rate. In the network, the most efficient way of spotting intrusions is through the deployment of machine Learning (ML) - IDS and deep Learning (DL) - IDS systems. In this paper, our method based on DL proposes an efficient unsupervised level of shallow and deep multiple kernel level algorithms (MKL). To detect the malicious traffic, carry out experiments on DDoS attack databases with the MKL algorithm and correlate the end results with developed methods. Our test outcome reveal that the proposed method provides better accuracy and detection rate.
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