An Intrusion Detection System for Network Security Using Recurrent Neural Network

K. Jadhav, Mohit Gangwar
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Abstract

To maintain the security of vulnerable network is the most essential thing in network system; for network protection or to eliminate unauthorized access of internal as well as external connections, various architectures have been suggested. Various existing approaches has developed different approaches to detect suspicious attacks on victimized machines; nevertheless, an external user develops malicious behaviour and gains unauthorized access to victim machines via such a behaviour framework, referred to as malicious activity or Intruder. A variety of supervised machine algorithms and soft computing algorithms have been developed to distinguish events in real-time as well as synthetic network log data. On the benchmark data set, the NLSKDD most commonly used data set to identify the Intruder. In this paper, we suggest using machine learning algorithms to identify intruders. A signature detection and anomaly detection are two related techniques that have been suggested. In the experimental study, the Recurrent Neural Network (RNN) algorithm is demonstrated with different data sets, and the system’s output is demonstrated in a real-time network context.
基于递归神经网络的网络安全入侵检测系统
维护脆弱网络的安全是网络系统中最重要的事情;为了保护网络或消除对内部和外部连接的未经授权的访问,已经提出了各种架构。各种现有的方法已经开发出不同的方法来检测对受害机器的可疑攻击;然而,外部用户通过这种行为框架开发恶意行为并获得对受害者机器的未经授权访问,称为恶意活动或入侵者。各种监督机器算法和软计算算法已被开发用于区分实时事件和合成网络日志数据。在基准数据集上,NLSKDD最常用的数据集来标识入侵者。在本文中,我们建议使用机器学习算法来识别入侵者。签名检测和异常检测是两种相关的技术。在实验研究中,利用不同的数据集对递归神经网络(RNN)算法进行了验证,并在实时网络环境下对系统输出进行了验证。
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