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Modeling An Intrusion Detection System Using Data Mining And Genetic Algorithms Based On Fuzzy Logic

机译:基于模糊逻辑的数据挖掘和遗传算法建模入侵检测系统

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Fuzzy logic based methods together with the techniques from Artificial Intelligence have gained importance. Data mining techniques like clustering techniques, Association rules together with fuzzy logic to model the fuzzy association rules are being used for classifying data. These together with the techniques of genetic algorithms like genetic programming are producing better results. The present paper proposes a model for intrusion detection systems for anomaly detection based on fuzzy association rules which use genetic programming. The model is implemented and tested on sample data with 40 variables and the results are documented in the paper. As the model includes the LGP,MEP and GEP where the three collectively tries to detect the intrusion to a great extent.
机译:基于模糊逻辑的方法以及人工智能技术已变得越来越重要。诸如聚类技术,关联规则以及对模糊关联规则进行建模的模糊逻辑之类的数据挖掘技术正用于对数据进行分类。这些以及诸如遗传编程之类的遗传算法技术正在产生更好的结果。本文提出了一种基于模糊关联规则的遗传检测入侵检测系统模型。该模型是在具有40个变量的样本数据上实现和测试的,其结果记录在文件中。由于该模型包括LGP,MEP和GEP,因此这三个模型在很大程度上试图检测入侵。

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