一种基于GOA的网络入侵检测系统多级半监督学习新方法

IF 0.5 Q4 COMPUTER SCIENCE, THEORY & METHODS
A. Madhuri, V. E. Jyothi, S. Praveen, S. Sindhura, V. S. Srinivas, D. L. S. Kumar
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引用次数: 12

摘要

入侵检测技术是当今网络安全的重要技术之一。利用机器学习技术,研究人员开发了不同的入侵系统。但是,所设计的模型的韧性受到两个参数的影响,一是多个类别的网络流量高度不均衡,二是测试集和训练集在特征空间上的分布不相同。提出了一种基于半监督层次均值法(HSK-means)的人工神经网络(ANN)多级入侵检测模型。为了降低入侵检测的错误率,人工神经网络采用了蝗虫优化算法(Grasshopper Optimization Algorithm, GOA)。GOA算法通过选择重要有用的参数作为偏差和权重,降低入侵检测系统的错误率,这是该系统的主要目标。模式发现模块采用基于聚类的方法来发现未知的模式。在这里,测试样品被视为未标记的未知图案或已知图案。使用KDDCUP99作为数据集对所提方法的性能进行了评估。实验结果表明,基于GOA的半监督学习方法的预测模型在敏感性、特异性和总体准确性方面都优于已有的入侵系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Multi-Level Semi-Supervised Learning Approach for Network Intrusion Detection System Based on the ‘GOA’
One of the important technologies in present days is Intrusion detection technology. By using the machine learning techniques, researchers were developed different intrusion systems. But, the designed models toughness is affected by the two parameters, in that first one is, high network traffic imbalance in several categories, and another is, non-identical distribution is present in between the test set and training set in feature space. An artificial neural network (ANN) multi-level intrusion detection model with semi-supervised hierarchical [Formula: see text]-means method (HSK-means) is presented in this paper. Error rate of intrusion detection is reduced by the ANN’s accurate learning so it uses the Grasshopper Optimization Algorithm (GOA) which is analysed in this paper. Based on selection of important and useful parameters as bias and weight, error rate of intrusion detection system is reduced in the GOA algorithm and this is the main objective of the proposed system. Cluster based method is used in the pattern discovery module in order to find the unknown patterns. Here the test sample is treated as unlabelled unknown pattern or the known pattern. Proposed approach performance is evaluated by using the dataset as KDDCUP99. It is evident from the experimental findings that the projected model of GOA based semi supervised learning approach is better in terms of sensitivity, specificity and overall accuracy than the intrusion systems which are existed previously.
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来源期刊
JOURNAL OF INTERCONNECTION NETWORKS
JOURNAL OF INTERCONNECTION NETWORKS COMPUTER SCIENCE, THEORY & METHODS-
自引率
14.30%
发文量
121
期刊介绍: The Journal of Interconnection Networks (JOIN) is an international scientific journal dedicated to advancing the state-of-the-art of interconnection networks. The journal addresses all aspects of interconnection networks including their theory, analysis, design, implementation and application, and corresponding issues of communication, computing and function arising from (or applied to) a variety of multifaceted networks. Interconnection problems occur at different levels in the hardware and software design of communicating entities in integrated circuits, multiprocessors, multicomputers, and communication networks as diverse as telephone systems, cable network systems, computer networks, mobile communication networks, satellite network systems, the Internet and biological systems.
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