基于学习向量量化和主成分分析的大数据入侵检测系统异常检测分析

Muhammad Salman, Diyanatul Husna, Stella Gabriella Apriliani, Josua Geovani Pinem
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引用次数: 5

摘要

数据安全已经成为任何组织信息系统的一个非常重要的组成部分。互联网上越来越多的威胁已经演变并能够欺骗防火墙以及防病毒软件。此外,攻击的数量越来越多,防火墙或防病毒软件也越来越难以处理。为了提高系统的安全性,通常通过增加入侵检测系统(IDS)来实现。入侵检测系统分为基于异常的检测和基于签名的检测。在本研究中,为了处理大量的数据,使用了大数据技术。提出了基于异常的检测方法,采用学习向量量化算法对攻击进行检测。学习向量量化是一种神经网络技术,它学习输入本身,然后根据输入给出适当的输出。通过改变LVQ中存在的测试参数,进行了修改以提高测试精度。改变学习率,epoch和k-fold交叉验证导致更有效的输出。通过计算每个攻击类的混淆矩阵表中的信息检索值得到输出。采用主成分分析技术和学习向量量化技术,通过降低数据维数来提高系统性能。采用18个主成分,数据集成功缩减47.3%,识别率达到96.52%,时间效率提高43.16%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Anomaly based Detection Analysis for Intrusion Detection System using Big Data Technique with Learning Vector Quantization (LVQ) and Principal Component Analysis (PCA)
Data security has become a very serious parf of any organizational information system. More and more threats across the Internet has evolved and capable to deceive firewall as well as antivirus software. In addition, the number of attacks become larger and become more dificult to be processed by the firewall or antivirus software. To improve the security of the system is usually done by adding Intrusion Detection System(IDS), which divided into anomaly-based detection and signature-based detection. In this research to process a huge amount of data, Big Data technique is used. Anomaly-based detection is proposed using Learning Vector Quantization Algorithm to detect the attacks. Learning Vector Quantization is a neural network technique that learn the input itself and then give the appropriate output according to the input. Modifications were made to improve test accuracy by varying the test parameters that present in LVQ. Varying the learning rate, epoch and k-fold cross validation resulted in a more efficient output. The output is obtained by calculating the value of information retrieval from the confusion matrix table from each attack classes. Principal Component Analysis technique is used along with Learning Vector Quantization to improve system performance by reducing the data dimensionality. By using 18-Principal Component, dataset successfully reduced by 47.3%, with the best Recognition Rate of 96.52% and time efficiency improvement up to 43.16%.
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