Using genetic algorithm to improve the performance of multi-host vulnerability checkers

A. Mohamed
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引用次数: 0

Abstract

This work is based on the reconfiguration of the NetKuang to improve its performance. It operates on computer networks employing the UNIX OS. It detects vulnerabilities in poor system configurations. So this work is not only capable of searching a large number of hosts in parallel, but it also considers potential configuration vulnerabilities present in the network. The main disadvantage of NetKuang is that it can only develop one vulnerability at a time on a given system. Furthermore, there is a leak in memory when running a task. Our work aims at developing more than one vulnerability at a time. Vulnerabilities are discovered using a backward goal-based technique. That is, inducing a different search technique based on a genetic algorithm to discover the vulnerabilities. We aim at using genetic algorithms to point out several vulnerabilities simultaneously. Moreover, our technique overcomes most of the previously mentioned disadvantages produced by the standard technique. Considering the genetic algorithm, there are two different ways that the search would apply: the simple genetic algorithms, and the classifier genetic algorithms. The one chosen in this paper is the classifier genetic algorithm, that would produce the best result. The time and space complexities are computed in order to compare the proposed technique with the standard one for the purpose of getting the best results.
利用遗传算法改进多主机漏洞检查器的性能
这项工作是基于NetKuang的重新配置,以提高其性能。它在采用UNIX操作系统的计算机网络上运行。它可以检测糟糕的系统配置中的漏洞。因此,这项工作不仅能够并行搜索大量主机,而且还考虑了网络中存在的潜在配置漏洞。NetKuang的主要缺点是它一次只能在给定的系统上开发一个漏洞。此外,在运行任务时存在内存泄漏。我们的工作旨在一次开发多个漏洞。漏洞是使用基于反向目标的技术发现的。即引入一种基于遗传算法的不同搜索技术来发现漏洞。我们的目标是利用遗传算法同时指出几个漏洞。此外,我们的技术克服了前面提到的标准技术产生的大多数缺点。考虑到遗传算法,有两种不同的搜索方法:简单遗传算法和分类器遗传算法。本文选择的分类器遗传算法可以产生最好的结果。计算了时间和空间复杂度,以便与标准方法进行比较,以获得最佳结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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