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Design and analysis of genetic fuzzy systems for intrusion detection in computer networks

机译:计算机网络入侵检测遗传模糊系统的设计与分析

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摘要

The capability of fuzzy systems to solve different kinds of problems has been demonstrated in several previous investigations. Genetic fuzzy systems (GFSs) hybridize the approximate reasoning method of fuzzy systems with the learning capability of evolutionary algorithms. The objective of this paper is to design and analysis of various kinds of genetic fuzzy systems to deal with intrusion detection problem as a new real-world application area which is not previously tackled with GFSs. The resulted intrusion detection system would be capable of detecting normal and abnormal behaviors in computer networks. We have presented three kinds of genetic fuzzy systems based on Michigan, Pittsburgh and iterative rule learning (IRL) approaches to deal with intrusion detection as a high-dimensional classification problem. Experiments were performed with DARPA data sets which have information on computer networks, during normal and intrusive behaviors. The paper presents some results and compares the performance of different generated fuzzy rule sets in detecting intrusion in a computer network according to three different types of genetic fuzzy systems.
机译:先前的一些研究已经证明了模糊系统解决各种问题的能力。遗传模糊系统(GFS)将模糊系统的近似推理方法与进化算法的学习能力混合在一起。本文的目的是设计和分析各种遗传模糊系统,以解决入侵检测问题,这是GFS以前没有解决的新的实际应用领域。所得的入侵检测系统将能够检测计算机网络中的正常和异常行为。我们介绍了三种基于密歇根州,匹兹堡和迭代规则学习(IRL)方法的遗传模糊系统,将入侵检测作为高维分类问题来处理。使用DARPA数据集进行了实验,这些数据集在正常和侵入行为期间均具有有关计算机网络的信息。本文介绍了一些结果,并根据三种不同类型的遗传模糊系统,比较了不同生成的模糊规则集在检测计算机网络入侵方面的性能。

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