A Comparison of Machine Learning Classifiers for Network Intrusion Detection System

P. Bhatt, Priyanka Dahiya
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Abstract

The primary objective of this paper is to assess and detect intrusions, which is one of the most complicated tasks due to the increasing diversity of attacks. As advanced breaches grow increasingly, it will become more difficult to detect them in various industries, such as industry and national security. Traditional intrusion detection methods are no longer capable of detecting malicious behaviour that follows unusual patterns. CSE-CICIDS2018 dataset is a popular dataset used for testing intrusion detection systems (IDS). This research was intended to develop predictive models for network-based intrusion detection. That is the latest intrusion detection dataset, which is huge data, open source, and covers a broad spectrum of attack patterns. This research uses two machine-learning-based algorithms, the Random Forest and Decision Tree algorithms, to focus on training and testing accuracy of the dataset. This paper finds out that the Random Forest provides the highest 99% accuracy as compared to the Decision Tree.
网络入侵检测系统中机器学习分类器的比较
本文的主要目标是评估和检测入侵,由于攻击的多样性日益增加,这是最复杂的任务之一。随着先进的漏洞越来越多,在工业和国家安全等各个行业中发现它们将变得越来越困难。传统的入侵检测方法已无法检测出遵循异常模式的恶意行为。CSE-CICIDS2018数据集是用于测试入侵检测系统(IDS)的流行数据集。本研究旨在建立基于网络的入侵检测预测模型。这是最新的入侵检测数据集,它是一个巨大的数据,开源的,涵盖了广泛的攻击模式。本研究使用两种基于机器学习的算法,随机森林和决策树算法,专注于训练和测试数据集的准确性。本文发现,与决策树相比,随机森林提供了最高的99%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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