Machine Learning Based Intrusion Detection System for Network Security Using Self-Organizing Map

Rahul Mishra
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Abstract

Machine learning techniques are widely used for detecting network attacks at the network level and the host level in a timely and automatic, to develop an intrusion detection system (IDS) for grading. Malicious attacks are always the need for change and scaling solutions, because it occurred during a very large volume, however, a number of challenges will occur. There is a data set that can be publicly available for further research on another malware of cyber security within the community. Network, plays an important role in modern life, has become the network security is an important field of research. Is an important network security technology Intrusion Detection System (IDS) being to monitor the software running on the network and hardware status. Despite the decades of development, the existing IDS, still, to reduce the improved error rate detection accuracy, are faced with the challenge of detecting unknown attacks. To overcome the issues proposed the method is Self-Organizing Map (SOM) Performance of intrusion detection depends mainly on the accuracy. Accuracy intrusion detection is to reduce the error rate, it must be strengthened in order to increase the detection rate. In order to improve performance, different technologies, have been used in recent works. It is the main work of the intrusion detection system for analyzing a huge network traffic data. Well-organized classification method, you need to solve this problem.
基于机器学习的自组织映射网络安全入侵检测系统
机器学习技术被广泛用于及时、自动地检测网络层面和主机层面的网络攻击,从而开发出分级的入侵检测系统(IDS)。恶意攻击总是需要更改和扩展解决方案,因为它发生在非常大的容量期间,然而,会出现许多挑战。有一个数据集可以公开使用,以进一步研究社区内的另一种网络安全恶意软件。网络,在现代人的生活中扮演着重要的角色,已经成为网络安全研究的一个重要领域。入侵检测系统(IDS)是一种重要的网络安全技术,用于监控网络上运行的软件和硬件的状态。尽管经过了几十年的发展,现有的入侵检测系统仍然面临着检测未知攻击的挑战,以降低检测准确率。为了克服这些问题,提出了自组织映射(SOM)方法,其性能主要取决于入侵检测的准确性。入侵检测的准确性是为了降低错误率,必须加强,才能提高检测率。为了提高性能,在最近的工作中使用了不同的技术。对庞大的网络流量数据进行分析是入侵检测系统的主要工作。组织良好的分类方法,需要解决这个问题。
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