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首页> 外文期刊>International journal of semantic computing >MEASURING INCONSISTENCY IN A NETWORK INTRUSION DETECTION RULE SET BASED ON SNORT
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MEASURING INCONSISTENCY IN A NETWORK INTRUSION DETECTION RULE SET BASED ON SNORT

机译:基于SNORT的网络入侵检测规则集中的不一致性测量

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摘要

In this preliminary study, we investigate how inconsistency in a network intrusion detection rule set can be measured. To achieve this, we first examine the structure of these rules which are based on Snort and incorporate regular expression (Regex) pattern matching. We then identify primitive elements in these rules in order to translate the rules into their (equivalent) logical forms and to establish connections between them. Additional rules from background knowledge are also introduced to make the correlations among rules more explicit. We measure the degree of inconsistency in formulae of such a rule set (using the Scoring function, Shapley inconsistency values and Blame measure for prioritized knowledge) and compare the informativeness of these measures. Finally, we propose a new measure of inconsistency for prioritized knowledge which incorporates the normalized number of atoms in a language involved in inconsistency to provide a deeper inspection of inconsistent formulae. We conclude that such measures are useful for the network intrusion domain assuming that introducing expert knowledge for correlation of rules is feasible.
机译:在此初步研究中,我们调查了如何测量网络入侵检测规则集中的不一致性。为此,我们首先检查这些基于Snort并结合正则表达式(Regex)模式匹配的规则的结构。然后,我们在这些规则中标识原始元素,以便将规则转换为它们的(等效)逻辑形式并在它们之间建立连接。还引入了来自背景知识的其他规则,以使规则之间的相关性更加明确。我们在这种规则集的公式中测量不一致的程度(使用评分功能,Shapley不一致值和Blame度量用于优先知识),并比较这些度量的信息性。最后,我们提出了一种针对优先知识的不一致的新度量,该度量在涉及不一致的语言中合并了归一化原子数,以提供对不一致公式的更深入检查。我们得出结论,假设引入专家知识进行规则关联是可行的,那么这些措施对于网络入侵域很有用。

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