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A decision support system for constructing an alert classification model

机译:用于构建警报分类模型的决策支持系统

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摘要

As the rapid growth of network attacking tools, patterns of network intrusion events change gradually. Although many researches had been proposed to analyze network intrusion behaviors in accordance with low-level network data, they still suffer a large mount of false alerts and result in difficulties for network administrators to discover useful information from these alerts. To reduce the load of administrators, by collecting and analyzing unknown attack sequences systematically, administrators can do the duty of fixing the root causes. Due to the different characteristics of each intrusion, none of analysis methods can correlate IDS alerts precisely and discover all kinds of real intrusion patterns. Therefore, an alert-based decision support system is proposed in this paper to construct an alert classification model for on-line network behavior monitoring. The architecture of decision support system consists of three phases: Alert Preprocessing Phase, Model Constructing Phase and Rule Refining Phase. The Alert Processing Phase is used to transform IDS alerts into alert transactions with specific data format as alert subsequences, where an alert sequence is a kind of well-aggregated alert transaction format to discover intrusion behaviors. Besides, the Model Constructing Phase is used to construct three kinds of rule classes: normal rule classes, intrusion rule classes and suspicious rule classes, to filter false alert patterns and analyze each existing or unknown alert patterns; each rule class represents a set of classification rules. Normal rule class, a set of false alert classification rules, can be trained by using sequential pattern mining approach in an attack-free environment. Intrusion rule classes, a set of known intrusion classification rules, and suspicious rule classes, a set of novel intrusion classification rules, can be trained in a simulated attacking environment using several well-known rootkits and labeling by experts. Finally, the Rule Refining Phase is used to change the classification flags of alert sequence across different time intervals. According to the urgent situations of different levels. Network administrators can do event protecting or vulnerability repairing, even or cause tracing of attacks. Therefore, the decision support system can prevent attacks effectively, find novel attack patterns exactly and reduce the load of administrators efficiently.
机译:随着网络攻击工具的迅速发展,网络入侵事件的模式逐渐改变。尽管已经提出了许多研究来根据低级网络数据来分析网络入侵行为,但是它们仍然遭受大量虚假警报,并导致网络管理员难以从这些警报中发现有用的信息。为了减轻管理员的负担,通过系统地收集和分析未知的攻击序列,管理员可以执行解决根本原因的职责。由于每个入侵的特征不同,因此没有任何一种分析方法可以准确地将IDS警报关联起来并发现各种真实的入侵模式。因此,本文提出了一种基于警报的决策支持系统,以构建用于在线网络行为监测的警报分类模型。决策支持系统的体系结构包括三个阶段:警报预处理阶段,模型构建阶段和规则完善阶段。警报处理阶段用于将IDS警报转换为具有特定数据格式的警报事务(作为警报子序列),其中警报序列是一种良好聚集的警报事务格式,用于发现入侵行为。此外,模型构造阶段用于构造三种规则类别:普通规则类别,入侵规则类别和可疑规则类别,以过滤错误警报模式并分析每个现有或未知警报模式;每个规则类代表一组分类规则。正常规则类(一组错误警报分类规则)可以在无攻击环境中使用顺序模式挖掘方法进行训练。入侵规则类(一组已知的入侵分类规则)和可疑规则类(一组新的入侵分类规则)可以在模拟攻击环境中使用多个众所周知的rootkit进行训练,并由专家进行标记。最后,规则细化阶段用于在不同时间间隔内更改警报序列的分类标志。根据不同层次的紧急情况。网络管理员可以进行事件保护或漏洞修复,甚至可以跟踪攻击。因此,决策支持系统可以有效地防止攻击,准确地找到新颖的攻击模式,并有效地减轻管理员的负担。

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