Network Intrusion Detection System using Supervised Learning based Voting Classifier

S. Sridevi, R. Prabha, K. Reddy, K. Monica, G. Senthil, M. Razmah
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引用次数: 8

Abstract

As the internet has advanced nowadays, so has the frequent of internet-based attacks. Intrusion Detection (ID) is among the most widely used methods for identifying hostile activity in a network by examining its traffic. Machine-learning [ML] approaches are increasingly being used to solve all those situations where rationally comprehending the process of interest is difficult. A hugeamount of strategies on the basis of ML methodologies are being developed. In networked systems, intrusion detection is an issue in which, while it is not essential to interpret the measures obtained from a process, it is critical to acquire a response from a classification algorithm whether the network traffic is influenced by anomalies. To enhance network security, a strong Intrusion Detection System (IDS) is essential. In this paper, various ML algorithms have been implemented and compared for predicting whether there is intrusion in network data traffic or not.
基于监督学习的投票分类器网络入侵检测系统
随着互联网的发展,基于互联网的攻击也越来越频繁。入侵检测(ID)是通过检查网络流量来识别网络中恶意活动的最广泛使用的方法之一。机器学习[ML]方法越来越多地被用于解决所有那些难以理性理解兴趣过程的情况。基于机器学习方法的大量策略正在开发中。在网络系统中,入侵检测是一个问题,虽然解释从过程中获得的度量并不重要,但从分类算法中获得网络流量是否受到异常影响的响应是至关重要的。为了提高网络安全,一个强大的入侵检测系统(IDS)是必不可少的。本文对各种机器学习算法进行了实现和比较,以预测网络数据流量中是否存在入侵。
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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