Detection of Application layer DDoS Attacks Based on Bayesian Classifier

S. Khairi, D. Nashat
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引用次数: 1

Abstract

One of the major challenges in networks security is detecting network attacks. The HTTP flooding attack is the most common type of DDoS attacks that targets application layer. The malicious DDoS packets are encapsulated with the huge amount of normal traffic, so this type of attack is considered the hardest one for detection. The available detection techniques for the HTTP flooding attack usually used similarity methods for traffic attributes or machine learning algorithms but these techniques are not effective especially for large scale networks. In this paper, a new detection technique is presented based on conditional probability and Bayes’ theorem. First the probability value for every normal traffic attribute is calculated. Then, we compute the conditional probability for the same attribute in any incoming connection given the occurrence of the same value in the previous normal traffic. Finally, the total probability is calculated by using the Bayes’ theorem to classify it either as normal or abnormal connection. The performance of the proposed technique is evaluated by extensive simulation in terms of its detection rate, probability of false positive and false negative.
基于贝叶斯分类器的应用层DDoS攻击检测
检测网络攻击是网络安全面临的主要挑战之一。HTTP泛洪攻击是针对应用层的最常见的DDoS攻击类型。恶意DDoS报文封装在大量的正常流量中,被认为是最难检测的攻击类型。现有的HTTP泛洪攻击检测技术通常采用流量属性相似方法或机器学习算法,但这些技术在大规模网络中效果不佳。本文提出了一种基于条件概率和贝叶斯定理的检测方法。首先计算每个正常流量属性的概率值。然后,我们计算相同属性在任何传入连接中出现的条件概率,假设在之前的正常流量中出现相同的值。最后,利用贝叶斯定理计算总概率,将其划分为正常连接和异常连接。通过大量的仿真,从检测率、假阳性和假阴性概率等方面对该技术的性能进行了评价。
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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