Experiments with Neural Networks Training Algorithms for DDoS attacks Detection

F. Jokhio, A. A. Jamali, M. Anjum, K. Kanwar, S. Afridi
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Abstract

Attacks on servers to bring their services down is growing rapidly. There are several possible methods through which attackers can attack a server. Distributed denials of service (DDoS) attacks are one of these attacks types in computing environments. In this paper, we discuss the possible ways of DDoS attacks detection using artificial neural network based techniques. Here a feed forward neural network is designed to detect DDoS attacks in a network based environment. Performance of feed forward neural network is analyzed by applying three different training algorithms. These algorithms are (1) Scaled Conjugate Gradient (2) Bayesian Regularization and (3) Gradient Descent. Results show that Bayesian Regularization algorithm is better among these three training algorithms and it has less number of misclassifications.
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基于神经网络训练算法的DDoS攻击检测实验
针对服务器的攻击使其服务瘫痪的情况正在迅速增加。攻击者可以通过几种可能的方法攻击服务器。分布式拒绝服务(DDoS)攻击是计算环境中的一种攻击类型。本文讨论了利用人工神经网络技术检测DDoS攻击的可能方法。这里设计了一个前馈神经网络来检测基于网络的环境中的DDoS攻击。采用三种不同的训练算法,分析了前馈神经网络的性能。这些算法是(1)缩放共轭梯度(2)贝叶斯正则化和(3)梯度下降。结果表明,贝叶斯正则化算法在三种训练算法中表现较好,且误分类次数较少。
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