Real Time Network Intrusion Detection using Machine Learning Technique

Adrian Dsouza, Vedant Lanjewar, Abhishek Mahakal, S. Khachane
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Abstract

This paper reflects the work carried out in network security using distinctive machine-based learning techniques. In response the exponential increase in network space breaches and data leaks, the demand for a system that can detect anomalies and notify the system admin is imperative. Using packet sniffing modules, we capture the packets and then compare them to a pre-trained machine learning module trained on the NSL KDD dataset to detect ambiguous packets. By selecting the desired port, the IDS (Intrusion Detection System) sniff all incoming packets and categorizes them as anomalous if their behavior is not normal. On successful prediction, we present the user with a choice to act against the prescribed threat or ignore it as per the user's request. A detailed analysis report shall then be presented periodically to provide an overview of the overall health of the system on which our IDS system has been deployed.
基于机器学习技术的实时网络入侵检测
本文反映了使用独特的基于机器的学习技术在网络安全方面开展的工作。为了应对网络空间泄露和数据泄露的指数级增长,对能够检测异常并通知系统管理员的系统的需求势在必行。使用数据包嗅嗅模块,我们捕获数据包,然后将它们与在NSL KDD数据集上训练的预训练机器学习模块进行比较,以检测歧义数据包。通过选择所需的端口,IDS(入侵检测系统)嗅探所有传入的数据包,如果它们的行为不正常,则将其分类为异常。在成功预测后,我们会根据用户的要求向用户提供一个选择,是针对规定的威胁采取行动,还是忽略它。然后,将定期提供详细的分析报告,以概述部署了IDS系统的系统的整体健康状况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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