Visual Analytic Agent-Based Framework for Intrusion Alert Analysis

Riyanat Shittu, A. Healing, R. Bloomfield, M. Rajarajan
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引用次数: 6

Abstract

A large amount of research effort is focused on developing methods for correlating network intrusion alerts, so as to better understand a network's current security state. The accuracy of traditional static methods of correlation is however limited in large-scale complex systems, where the degree of human insight and validation necessary is higher, and dynamic attack behaviours are likely. Many recent efforts have centred around visualising security data in a way that can better involve and support a human analyst in the network security triage process but this potentially gives rise to another complex system of analytical and visual components which need to be configured, trained and understood. This paper describes an agent-based framework designed to manage a set of visual analytic components in order to improve a security analyst's understanding and ability to classify the threats to the network that they govern. In the proof-of-concept system an agent selects the most effective method for event aggregation, given a particular set of events which have been generated by an Intrusion Detection System (IDS). We present a novel application of a dynamic response model in order to configure the aggregation component such that the data is best simplified for more effective further analysis.
基于视觉分析代理的入侵警报分析框架
为了更好地了解网络的当前安全状态,大量的研究工作集中在开发关联网络入侵警报的方法上。然而,传统的静态关联方法的准确性在大规模复杂系统中是有限的,在这些系统中,人类的洞察力和验证程度需要更高,并且可能存在动态攻击行为。最近的许多努力都集中在可视化安全数据上,这种方式可以更好地参与和支持网络安全分类过程中的人工分析师,但这可能会产生另一个复杂的分析和可视化组件系统,需要配置、培训和理解。本文描述了一个基于代理的框架,该框架旨在管理一组可视化分析组件,以提高安全分析人员对其所管理的网络威胁的理解和分类能力。在概念验证系统中,给定入侵检测系统(IDS)生成的一组特定事件,代理选择最有效的事件聚合方法。我们提出了一种动态响应模型的新应用,以便配置聚合组件,以便最好地简化数据以进行更有效的进一步分析。
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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