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Anomaly based Malicious Traffic Identification using Kernel Extreme Machine Learning (KELM) Classifier and Kernel Principal Component Analysis (KPCA)

机译:使用内核极限机器学习(KELM)分类器和内核主成分分析(KPCA)的基于异常的恶意流量识别

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Objectives: The rapid growth of new vulnerabilities causes the network by Denial of Service attack (DoS). The DoSattack causes traffic flow in network. Therefore it increases the difficulties to detect the DoSattack in traffic by means of misuse detection. The behavior patterns are analyzed in anomaly Anomaly detection to identify the attack. Methods: In detection of unknown worms anomaly detection is more comfortable than misuse detection. In this paper, hybrid optimization and extreme machine learning classifier is proposed for anomaly detection. This approach detects the DoSattack by analyzing the profiles of traffic patterns. Findings: Principal Component Analysis (PCA) is adopted in this approach to extract the feature from the dataset. A short time window is utilized to gather all features from packet headers. Extreme learning machine based HGAPSO is used to classify the unknown attack. Improvement: thus the proposed system is implemented as real-time. Performance evaluation shows that this approach provides 1.016s time consumption and 95 % accuracy tan existing approach during detection of DoSin network traffic.
机译:目标:新漏洞的快速增长导致网络遭到拒绝服务攻击(DoS)。 DoSattack导致网络中的流量流动。因此,增加了通过滥用检测来检测流量中DoSattack的难度。在异常检测中分析行为模式以识别攻击。方法:在未知蠕虫的检测中,异常检测比滥用检测更容易。本文提出了混合优化和极限机器学习分类器进行异常检测。此方法通过分析流量模式的配置文件来检测DoSattack。结果:采用这种方法的主成分分析(PCA)从数据集中提取特征。利用短时间窗口从数据包头中收集所有功能。基于极限学习机的HGAPSO用于对未知攻击进行分类。改进:因此,建议的系统实现为实时。性能评估表明,此方法在检测DoSin网络流量期间可提供1.016 s的时间消耗和95%的精度(与现有方法相比)。

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