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A data mining framework for building intrusion detection models

机译:建筑入侵检测模型的数据挖掘框架

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There is often the need to update an installed Intrusion Detection System (IDS) due to new attack methods or upgraded computing environments. Since many current IDSs are constructed by manual encoding of expert knowledge, changes to IDSs areexpensive and slow. In this paper; we describe a data mining framework for adaptively building Intrusion Detection (ID) models. The central idea is to utilize auditing programs to extract an extensive set of features that describe each network connectionor host session, and apply data mining programs to learn rules that accurately capture the behavior of intrusions and normal activities. These rules can then be used for misuse detection and anomaly detection. New detection models are incorporated into an existing IDS through a meta-learning (or co-operative learning) process, which produces a meta detection model that combines evidence from multiple models. We discuss the strengths of our data mining programs, namely, classification, meta-learning,association rules, and frequent episodes. We report our results of applying these programs to the extensively gathered network audit data for the 1998 DARPA Intrusion Detection Evaluation Program.
机译:由于新的攻击方法或升级的计算环境,通常需要更新已安装的入侵检测系统(ID)。由于许多当前IDS由专业知识的手动编码构建,因此对IDSS的更改会进行全面和缓慢。在本文中;我们描述了一种用于自适应建立入侵检测(ID)模型的数据挖掘框架。中央观点是利用审计程序来提取描述每个网络连接主机会话的广泛功能集,并应用数据挖掘程序,以了解准确捕获入侵和正常活动行为的规则。然后可以使用这些规则来滥用检测和异常检测。通过元学习(或共操作学习)过程并入新的检测模型,该过程产生了将来自多种模型的证据组合的元检测模型。我们讨论了数据挖掘计划的优势,即分类,元学习,关联规则和频繁的剧集。我们向1998年DARPA入侵检测评估计划的广泛收集网络审计数据应用这些计划的结果。

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