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MLIDS: A Machine Learning Approach for Intrusion Detection for Real Time Network Dataset

机译:MLIDS:用于实时网络数据集的入侵检测机器学习方法

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Computer network and virtual machine security is very essential in today’s era. Various architectures have been proposed for network security or prevent malicious access of internal or external users. Various existing systems have already developed to detect malicious activity on victim machines; sometimes any external user creates some malicious behavior and gets unauthorized access of victim machines to such a behavior system considered as malicious activities or Intruder. Numerous machine learning and soft computing techniques design to detect the activities in real-time network log audit data. KKDDCUP99 and NLSKDD most utilized data set to detect the Intruder on benchmark data set. In this paper, we proposed the identification of intruders using machine learning algorithms. Two different techniques have been proposed like a signature with detection and anomaly-based detection. In the experimental analysis, demonstrates SVM, Naïve Bayes and ANN algorithm with various data sets and demonstrate system performance on the real-time network environment.
机译:计算机网络和虚拟机安全性在今天的时代非常重要。已经提出了各种架构,用于网络安全或防止内部或外部用户的恶意访问。已经开发了各种现有系统来检测受害机的恶意活动;有时,任何外部用户都会创造一些恶意行为,并在被视为恶意活动或入侵者被认为的行为系统中未经授权访问受害者机器。众多机器学习和软计算技术设计,用于检测实时网络日志审计数据中的活动。 KKDDCUP99和NLSKDD最具利用的数据集以检测基准数据集的入侵者。在本文中,我们提出了使用机器学习算法的入侵者的识别。已经提出了两种不同的技术,如具有检测和基于异常的检测的签名。在实验分析中,使用各种数据集演示SVM,Naïve贝叶斯和ANN算法,并在实时网络环境下演示系统性能。

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