基于xor的计算机网络流量异常不同决策检测器

IF 3.7 4区 计算机科学 Q1 COMPUTER SCIENCE, THEORY & METHODS Romanian Journal of Information Science and Technology Pub Date : 2023-09-28 DOI:10.59277/romjist.2023.3-4.06
Danijela PROTIC, Miomir STANKOVIC
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引用次数: 0

摘要

基于异常的入侵检测系统旨在扫描计算机网络流量以发现异常行为。基于监督机器学习的二元分类器已被证明是将实例分类为正常或异常的高度准确的工具。监督式机器学习的主要缺点是处理时间长,需要大量的训练数据来确保准确的结果。约简数据集的两个预处理步骤是特征选择和特征缩放。在本文中,我们提出了一种新的基于正切双曲函数线性化和Levenberg-Marquardt算法的阻尼策略的双曲正切特征缩放方法。在京都2006+数据集上进行的实验使用了四种高精度二元分类器:加权k近邻、决策树、前馈神经网络和支持向量机。结果表明,双曲正切缩放可使处理时间缩短两倍以上。提出了一种基于xor的检测器来确定异常的冲突决策。比较了FNN和wk-NN模型的决策结果。研究表明,决策有时会产生不同的结果。相反决策的百分比已被证明是变化的,并且不受数据集大小的影响。
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XOR-Based Detector of Different Decisions on Anomalies in the Computer Network Traffic
Anomaly-based intrusion detection systems are designed to scan computer network traffic for abnormal behavior. Binary classifiers based on supervised machine learning have proven to be highly accurate tools for classifying instances as normal or abnormal. Main disadvantages of supervised machine learning are the long processing time and large amount of training data required to ensure accurate results. Two preprocessing steps to reduce data sets are feature selection and feature scaling. In this article, we present a new hyperbolic tangent feature scaling approach based on the linearization of the tangent hyperbolic function and the damping strategy of the Levenberg-Marquardt algorithm. Experiments performed on the Kyoto 2006+ dataset used four high-precision binary classifiers: weighted k-nearest neighbors, decision tree, feedforward neural networks, and support vector machine. It is shown that hyperbolic tangent scaling reduces processing time by more than twofold. An XOR-based detector is proposed to determine conflicting decisions about anomalies. The decisions of the FNN and wk-NN models are compared. It is shown that decisions sometimes turn out differently. The percentage of the opposite decisions has been shown to vary and is not affected by dataset size.
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来源期刊
Romanian Journal of Information Science and Technology
Romanian Journal of Information Science and Technology 工程技术-计算机:理论方法
CiteScore
5.50
自引率
8.60%
发文量
0
审稿时长
>12 weeks
期刊介绍: The primary objective of this journal is the publication of original results of research in information science and technology. There is no restriction on the addressed topics, the only acceptance criterion being the originality and quality of the articles, proved by independent reviewers. Contributions to recently emerging areas are encouraged. Romanian Journal of Information Science and Technology (a publication of the Romanian Academy) is indexed and abstracted in the following Thomson Reuters products and information services: • Science Citation Index Expanded (also known as SciSearch®), • Journal Citation Reports/Science Edition.
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