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Neural Networks for Intrusion Detection Systems

机译:入侵检测系统的神经网络

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Intrusion detection systems have got the potential to provide the first line of defense against computer network attacks. However, this potential is far from being exploited considering the fact that most of commercial IDS in the market do not identify novel attacks and generate false alerts for legitimate user activities. They mainly deploy misuse detection and are fully dependant on human interaction. Neural networks can be applied successfully to tackle these issues and design better intrusion detection system. Neural networks have already been used to solve many problems related to pattern recognition, data mining, data compression and research is still underway with regards to intrusion detection systems. Unsupervised learning and fast network convergence are some features that can be integrated in the newly designed IDS system using neural networks. This study will aim to explore current applications of neural networks for intrusion detection systems and identify possible neural network algorithms suitable for the task in hand.
机译:入侵检测系统具有提供抵御计算机网络攻击的第一道防线的潜力。但是,考虑到市场上大多数商业IDS不能识别新颖的攻击并不会为合法用户的活动生成虚假警报的事实,这种潜力还没有被开发。他们主要部署滥用检测,并且完全依赖于人与人之间的互动。神经网络可以成功地解决这些问题并设计出更好的入侵检测系统。神经网络已经被用来解决与模式识别,数据挖掘,数据压缩有关的许多问题,并且关于入侵检测系统的研究仍在进行中。无监督学习和快速网络收敛是可以使用神经网络集成到新设计的IDS系统中的一些功能。这项研究的目的是探索神经网络在入侵检测系统中的当前应用,并确定适合于当前任务的可能的神经网络算法。

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