A Hybrid Machine Learning Method for Intrusion Detection

H. Hemati, M. Ghasemzadeh, C. Meinel
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引用次数: 9

Abstract

Data security is an important area of concern for every computer system owner. An intrusion detection system is a device or software application that monitors a network or systems for malicious activity or policy violations. Already various techniques of artificial intelligence have been used for intrusion detection. The main challenge in this area is the running speed of the available implementations. In this research work, we present a hybrid approach which is based on the “linear discernment analysis” and the “extreme learning machine” to build a tool for intrusion detection. In the proposed method, the linear discernment analysis is used to reduce the dimensions of data and the extreme learning machine neural network is used for data classification. This idea allowed us to benefit from the advantages of both methods. We implemented the proposed method on a microcomputer with core i5 1.6 GHz processor by using machine learning toolbox. In order to evaluate the performance of the proposed method, we run it on a comprehensive data set concerning intrusion detection. The data set is called KDD, which is a version of the data set DARPA presented by MIT Lincoln Labs. The experimental results were organized in related tables and charts. Analysis of the results show meaningful improvements in intrusion detection. In general, compared to the existing methods, the proposed approach works faster with higher accuracy.
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入侵检测的混合机器学习方法
数据安全是每个计算机系统所有者关心的一个重要领域。入侵检测系统是一种设备或软件应用程序,用于监视网络或系统中的恶意活动或策略违反。各种人工智能技术已经被用于入侵检测。这方面的主要挑战是可用实现的运行速度。在这项研究中,我们提出了一种基于“线性识别分析”和“极限学习机”的混合方法来构建入侵检测工具。该方法利用线性识别分析对数据进行降维,利用极限学习机神经网络对数据进行分类。这个想法使我们能够从两种方法的优点中受益。我们利用机器学习工具箱在酷睿i5 1.6 GHz处理器的微型计算机上实现了该方法。为了评估该方法的性能,我们在一个涉及入侵检测的综合数据集上运行了该方法。该数据集被称为KDD,这是麻省理工学院林肯实验室提供的DARPA数据集的一个版本。实验结果整理成相关的表格。分析结果表明,该方法在入侵检测方面有很大的改进。总的来说,与现有的方法相比,本文提出的方法工作速度更快,精度更高。
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CiteScore
3.10
自引率
0.00%
发文量
29
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