A Network Intrusion Detection System Based on Categorical Boosting Technique using NSL-KDD

S. Raj, Megha Jain, P. Chouksey
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Abstract

Massive volumes of network traffic & data are generated by common technology including the Internet of Things, cloud computing & social networking. Intrusion Detection Systems are therefore required to track the network which dynamically analyses incoming traffic. The purpose of the IDS is to carry out attacks inspection or provide security management with desirable help along with intrusion data. To date, several approaches to intrusion detection have been suggested to anticipate network malicious traffic. The NSL-KDD dataset is being applied in the paper to test intrusion detection machine learning algorithms. We research the potential viability of ELM by evaluating the advantages and disadvantages of ELM. In the preceding part on this issue, we noted that ELM does not degrade the generalisation potential in the expectation sense by selecting the activation function correctly. In this paper, we initiate a separate analysis & demonstrate that the randomness of ELM often contributes to some negative effects. For this reason, we have employed a new technique of machine learning for overcoming the problems of ELM by using the Categorical Boosting technique (CATBoost).
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基于NSL-KDD分类增强技术的网络入侵检测系统
包括物联网、云计算和社交网络在内的通用技术产生了大量的网络流量和数据。因此,入侵检测系统需要跟踪网络,动态分析传入的流量。IDS的目的是与入侵数据一起进行攻击检测或为安全管理提供所需的帮助。迄今为止,已经提出了几种入侵检测方法来预测网络恶意流量。本文将NSL-KDD数据集用于测试入侵检测机器学习算法。我们通过评估ELM的优缺点来研究ELM的潜在可行性。在前面关于这个问题的部分中,我们注意到,通过正确选择激活函数,ELM不会降低期望意义上的泛化潜力。在本文中,我们进行了单独的分析,并证明了ELM的随机性往往会导致一些负面影响。因此,我们采用了一种新的机器学习技术,通过使用分类提升技术(CATBoost)来克服ELM的问题。
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