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首页> 外文期刊>Journal of Advanced Computatioanl Intelligence and Intelligent Informatics >A Class Association Rule Based Classifier Using Probability Density Functions for Intrusion Detection Systems
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A Class Association Rule Based Classifier Using Probability Density Functions for Intrusion Detection Systems

机译:使用概率密度函数的基于类别关联规则的入侵检测系统分类器

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摘要

As the number of computer systems connected to the Internet is increasing exponentially, the computer security has become a crucial problem, and many techniques for Intrusion detection have been proposed to detect network attacks efficiently. On the other hand, data mining algorithms based on Genetic Network Programming (GNP) have been proposed and applied to Intrusion detection recently. GNP is a graph-based evolutionary algorithm and can extract many important class association rules by making use of the distinguished representation ability of the graph structure. In this paper, probabilistic classification algorithms based on multi-dimensional probability distribution are proposed and combined with conventional class association rule mining of GNP, and applied to network intrusion detection for the performance evaluation. The proposed classification algorithms are based on 1) one-dimensional probability density functions and 2) a two-dimensional joint probability density function. These functions represent the distribution of normal and intrusion accesses and efficiently classify a new access data into normal, known intrusion or even unknown intrusion. The simulations using KDD99Cup database from MIT Lincoln Laboratory show some advantages of the proposed algorithms over the conventional mean and standard deviation-based method.
机译:随着连接到Internet的计算机系统的数量呈指数级增长,计算机安全已成为一个关键问题,并且提出了许多用于入侵检测的技术来有效地检测网络攻击。另一方面,最近提出了一种基于遗传网络编程(GNP)的数据挖掘算法并将其应用于入侵检测。 GNP是基于图的进化算法,可以利用图结构的出色表示能力来提取许多重要的类关联规则。提出了一种基于多维概率分布的概率分类算法,并结合常规的GNP分类关联规则挖掘,将其应用于网络入侵检测中进行性能评估。所提出的分类算法基于1)一维概率密度函数和2)二维联合概率密度函数。这些功能代表正常访问和入侵访问的分布,并有效地将新访问数据分类为正常,已知入侵甚至未知入侵。使用麻省理工学院林肯实验室的KDD99Cup数据库进行的仿真显示,与传统的基于均值和标准差的方法相比,该算法具有一些优势。

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