基于机器学习算法的入侵检测系统

Sandy Victor Amanoul, A. Abdulazeez, Diyar Qader Zeebare, F. Y. Ahmed
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引用次数: 4

摘要

网络在当今世界非常重要,数据安全已经成为一个重要的研究领域。IDS监视网络的软件和硬件状态。经过几十年的发展,目前的ids仍然可以提高检测精度,降低误报率并跟踪未知攻击。许多研究人员专注于使用机器学习方法开发ids来解决上述问题。利用计算机教学的高精度,可以自动识别正常和不规则数据的基本区别。未知的威胁也可以通过机器学习系统检测到,因为它们的通用性。本文提出了一种基于深度学习和依赖深度学习的IDS分类方法,该方法利用数据对象的初级维度对IDS文献进行分类和总结。我们认为这种分类法对网络安全研究人员来说是足够的。我们从机器学习中选择了三种算法(Bayes Net、Random Forest、Neural Network)和两种深度学习算法(RNN、LSTM),在KDD cup 99上进行了测试并评估了准确率算法,并使用WEKA程序计算了准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intrusion Detection Systems Based on Machine Learning Algorithms
Networks are important today in the world and data security has become a crucial area of study. An IDS monitors the status of the software and hardware of the network. Curing problems for current IDSs remain they improve detection precision, decrease false alarm rates and track unknown attacks after decades of advancement. Many researchers have focused on the development of IDSs using machine learning approaches to solve the above-described problems. With the high precision of computer teachings, the basic distinctions between usual and irregular data can be recognized automatically. Unknown threats may also be detected because of their generalizability via machine learning system. This paper suggests a taxonomy of IDS, which uses the primary dimension of data objects to classify and sum up IDS literatures based on and dependent on deep learning. We assume this kind of taxonomy is sufficient for researchers in cyber security. We selected three algorithms from machine learning (Bayes Net, Random Forest, Neural Network) and two algorithms of deep learning (RNN, LSTM), and we tested them on KDD cup 99 and evaluated accuracy algorithms, and we used a program WEKA To calculate the accuracy.
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