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首页> 外文期刊>Advances in Science, Technology and Engineering Systems >A Hybrid Approach for Intrusion Detection using Integrated K-Means based ANN with PSO Optimization
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A Hybrid Approach for Intrusion Detection using Integrated K-Means based ANN with PSO Optimization

机译:具有PSO优化的集成K型ANN的入侵检测混合方法

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摘要

Many advances in computer systems and IT infrastructures increases the risks associated with the use of these technologies. Specifically, intrusion into computer systems by unauthorized users is a growing problem and it is very challenging to detect. Intrusion detection technologies are therefore becoming extremely important to improve the overall security of computer systems. In the past decades, most of the intrusion detection systems designed suffer from the problem of high false negative and low efficiency rate. A powerful intrusion detection system (IDS) should be implemented to solve these issues and it is necessary to collect, reduce and analysis the data automatically. The integration of machine learning and artificial intelligence techniques serves this purpose in this paper. A use of particle swarm optimization (PSO) selects the optimal number of clusters and the integration of k-means based artificial neural network (ANN) achieves maximum efficiency when the number of clusters selected optimally. The proposed IDS are t bested with NSL-KD dataset and the experiment result shows the significance of the proposed IDS.
机译:计算机系统和IT基础架构的许多进展增加了与使用这些技术相关的风险。具体地,未经授权的用户入侵计算机系统是一个不断增长的问题,检测是非常具有挑战性的。因此,入侵检测技术变得非常重要,可以提高计算机系统的整体安全性。在过去的几十年中,设计的大多数入侵检测系统都遭受了高假阴性和低效率的问题。应实施强大的入侵检测系统(IDS)以解决这些问题,有必要自动收集,减少和分析数据。机器学习和人工智能技术的整合在本文中为此目的服务。使用粒子群优化(PSO)选择最佳簇数,并且基于K均值的人工神经网络(ANN)的集成在最佳选择的簇数时实现了最大效率。所提出的ID是NSL-KD数据集的T,实验结果表明了所提出的ID的重要性。

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