基于混沌的神经网络优化预测分布式拒绝服务(DDoS)攻击

Anisha Jha, Avikal Goel, Divansh Mahajan, Goonjan Jain
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引用次数: 0

摘要

分布式拒绝服务攻击(Distributed Denial-of-Service attack,简称DDoS)是指通过大量的流量使网络不堪重负,从而破坏网络的正常运行。DDoS攻击会导致各种各样的问题,比如网站停机、收入损失和公司声誉受损。应对DDoS攻击的主要挑战之一是如何及时准确地检测到DDoS攻击。机器学习算法可以被训练来识别网络流量中的模式,这些模式表明了DDoS攻击,它们也可以用来区分合法流量和攻击流量。本文讨论了一种利用基于混沌的算法来检测和预测DDoS攻击以提高神经网络性能的方法。此外,本文还讨论了使用基于混沌的优化来加速神经网络模型的训练过程。该技术使用混沌序列来设置模型的初始权重和偏差,这可以产生更大范围的随机起点。这可以帮助模型更快地找到最佳解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementing Chaos Based Optimisations on Neural Networks for Predictions of Distributed Denial-of-Service (DDoS) Attacks
A Distributed Denial-of-Service attack (DDoS) involves overwhelming a network with a large amount of traffic that aims to disrupt the normal functioning of a network. DDoS attacks can cause a variety of problems, such as website downtime, loss of revenue, and damage to a company’s reputation. One of the main challenges in dealing with DDoS attacks is detecting them in a timely and accurate manner.Machine learning algorithms can be trained to recognize patterns in network traffic that are indicative of a DDoS attack, and they can also be used to distinguish between legitimate traffic and attack traffic. The paper discusses a method for improving the performance of neural networks by utilizing chaos-based algorithms for detection and prediction of DDoS attacks. Moreover, this paper talks about using chaos-based optimization to speed up the process of training a model using neural networks. This technique uses a chaotic sequence to set the initial weights and biases of the model, which can result in a wider range of random starting points. This can help the model to find the best solution faster.
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