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Application Layer Intrusion Detection with Combination of Explicit-Rule-Based and Machine Learning Algorithms and Deployment in Cyber- Defence Program

机译:结合基于显式规则和机器学习算法的应用层入侵检测以及在网络防御程序中的部署

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摘要

There have been numerous works on network intrusion detection and prevention systems, but work on application layer intrusion detection and prevention is rare and not very mature. Intrusion detection and prevention at both network and application layers are important for cyber-security and enterprise system security. Since application layer intrusion is increasing day by day, it is imperative to give adequate attention to it and use state-of-the-art algorithms for effective detection and prevention. This paper talks about current state of application layer intrusion detection and prevention capabilities in commercial and open-source space and provides a path for evolution to more mature state that will address not only enterprise system security, but also national cyber-defence. Scalability and cost effectiveness were important factors which shaped the proposed solution.
机译:关于网络入侵检测和防御系统的工作很多,但是关于应用程序层入侵检测和防御的工作很少,而且还不是很成熟。网络和应用程序层的入侵检测和防御对于网络安全和企业系统安全至关重要。由于应用程序入侵日益增加,因此必须给予足够的重视,并使用最新的算法进行有效的检测和预防。本文讨论了商业和开放源代码空间中应用层入侵检测和防御功能的当前状态,并提供了向更成熟状态发展的途径,该状态将不仅解决企业系统安全问题,而且还将解决国家网络防御问题。可伸缩性和成本效益是决定提出的解决方案的重要因素。

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