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Application of Artificial Neural Network in Detection of DOS Attacks

机译:人工神经网络在DOS攻击检测中的应用

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A solo attack may cause a big loss in computer and network systems, its prevention is, therefore, very inevitable. Precise detection is very important to prevent such losses. Such detection is a pivotal part of any security tools like intrusion detection system, intrusion prevention system, and firewalls etc. Therefore, an approach is provided in this paper to analyze denial of service attack by using a supervised neural network. The methodology used sampled data from Kddcup99 dataset, an attack database that is a standard for judgment of attack detection tools. The system uses multiple layered perceptron architecture and resilient backpropagation for its training and testing. The developed system is then applied to denial of service attacks. Moreover, its performance is also compared to other neural network approaches which results more accuracy and precision in detection rate.
机译:单独攻击可能会在计算机和网络系统中造成巨大损失,因此,预防是非常不可避免的。精确检测对于防止此类损失非常重要。这种检测是任何安全工具(如入侵检测系统,入侵防御系统和防火墙等)的关键部分。因此,本文提供了一种使用监督神经网络来分析拒绝服务攻击的方法。该方法使用了来自Kddcup99数据集的采样数据,该数据集是攻击数据库的标准,是判断攻击检测工具的标准。该系统使用多层感知器体系结构和弹性反向传播进行训练和测试。然后将开发的系统应用于拒绝服务攻击。此外,它的性能也与其他神经网络方法进行了比较,后者可以提高检测率的准确性和精确度。

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