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Statistical analysis of different artificial intelligent techniques applied to Intrusion Detection System

机译:不同人工智能技术在入侵检测系统中的统计分析

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Intrusion Detection System (IDS) which are increasingly a key part of system defense are used to identify abnormal activities in a computer system. In general, the traditional IDS relies on the extensive knowledge of security experts, in particular, on their familiarity with the computer system to be protected. To reduce this dependence, various data-mining and machine learning techniques have been used in the literature. The experiments and evaluations of the proposed intrusion detection system are performed with the NSL-KDD intrusion detection dataset. We will apply different learning algorithms on NSL-KDD data set, to recognize between normal and attack connections and compare their performing in different scenarios- discretization, features selections and algorithm method for classification- using a powerful statistical analysis: ANOVA. In this study, both the accuracy of the configuration of different system and methodologies used, and also the computational time and complexity of the methodologies are analyzed.
机译:入侵检测系统(IDS)日益成为系统防御的重要组成部分,用于识别计算机系统中的异常活动。通常,传统的IDS依赖于安全专家的广泛知识,尤其是他们对要保护的计算机系统的熟悉程度。为了减少这种依赖性,文献中使用了各种数据挖掘和机器学习技术。使用NSL-KDD入侵检测数据集对提议的入侵检测系统进行了实验和评估。我们将在NSL-KDD数据集上应用不同的学习算法,以识别正常连接和攻击连接,并使用强大的统计分析:ANOVA来比较它们在不同情况下的性能-离散化,特征选择和分类算法方法。在这项研究中,不仅分析了使用不同系统和方法的配置的准确性,而且还分析了方法的计算时间和复杂性。

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