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An Online Intrusion Detection System to Cloud Computing Based on Neucube Algorithms

机译:基于Neucube算法的云计算在线入侵检测系统

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This article describes how as network traffic grows, attacks on traffic become more complicated and harder to detect. Recently, researchers have begun to explore machine learning techniques with cloud computing technologies to classify network threats. So, new and creative ways are needed to enhance intrusion detection system. This article addresses the source of the above issues through detecting an intrusion in cloud computing before it further disrupts normal network operations, because the complexity of malicious attack techniques have evolved from traditional malicious attack technologies (direct malicious attack), which include different malicious attack classes, such as DoS, Probe, R2L, and U2R malicious attacks, especially the zero-day attack in online mode. The proposed online intrusion detection cloud system (OIDCS) adopts the principles of the new spiking neural network architecture called NeuCube algorithm. It is proposed that this system is the first filtering system approach that utilizes the NeuCube algorithm. The OIDCS inherits the hybrid (supervised/unsupervised) learning feature of the NeuCube algorithm and uses this algorithm in an online system with lifelong learning to classify input while learning the system. The system is accurate, especially when working with a zero-day attack, reaching approximately 97% accuracy based on the to-be-remembered (TBR) encoding algorithm.
机译:本文介绍了随着网络流量的增长,如何对流量进行攻击变得更加复杂且更难检测。最近,研究人员已开始探索使用云计算技术对机器学习技术进行分类以对网络威胁进行分类。因此,需要新颖的方法来增强入侵检测系统。本文通过在进一步破坏正常网络运行之前检测到云计算中的入侵来解决上述问题的根源,因为恶意攻击技术的复杂性已经从传统的恶意攻击技术(直接恶意攻击)演变而来,传统的恶意攻击技术(包括不同的恶意攻击类别) ,例如DoS,Probe,R2L和U2R恶意攻击,尤其是在线模式下的零日攻击。拟议的在线入侵检测云系统(OIDCS)采用了新的尖峰神经网络架构(称为NeuCube算法)的原理。提出该系统是利用NeuCube算法的第一个过滤系统方法。 OIDCS继承了NeuCube算法的混合(有监督/无监督)学习功能,并在具有终身学习经验的在线系统中使用该算法对学习系统进行分类。该系统是准确的,尤其是在零日攻击中,根据要记住的(TBR)编码算法,该系统的准确率约为97%。

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