LINEBACKER: LINE-Speed Bio-Inspired Analysis and Characterization for Event Recognition

C. Oehmen, P. Bruillard, Brett D. Matzke, Aaron R. Phillips, Keith T. Star, Jeffrey L. Jensen, Doug Nordwall, S. R. Thompson, Elena S. Peterson
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引用次数: 1

Abstract

The cyber world is a complex domain, with digital systems mediating a wide spectrum of human and machine behaviors. While this is enabling a revolution in the way humans interact with each other and data, it also is exposing previously unreachable infrastructure to a worldwide set of actors. Existing solutions for intrusion detection and prevention that are signature-focused typically seek to detect anomalous and/or malicious activity for the sake of preventing or mitigating negative impacts. But a growing interest in behavior-based detection is driving new forms of analysis that move the emphasis from static indicators (e.g. rule-based alarms or tripwires) to behavioral indicators that accommodate a wider contextual perspective. Similar to cyber systems, biosystems have always existed in resource-constrained hostile environments where behaviors are tuned by context. So we look to biosystems as an inspiration for addressing behavior-based cyber challenges. In this paper, we introduce LINEBACKER, a behavior-model based approach to recognizing anomalous events in network traffic and present the design of this approach of bio-inspired and statistical models working in tandem to produce individualized alerting for a collection of systems. Preliminary results of these models operating on historic data are presented along with a plugin to support real-world cyber operations.
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LINEBACKER:事件识别的线速仿生分析和表征
网络世界是一个复杂的领域,数字系统调节着广泛的人类和机器行为。虽然这使人类与彼此和数据交互的方式发生了一场革命,但它也将以前无法访问的基础设施暴露给了全世界的参与者。现有的以签名为中心的入侵检测和防御解决方案通常会检测异常和/或恶意活动,以防止或减轻负面影响。但是,对基于行为的检测日益增长的兴趣正在推动新的分析形式,将重点从静态指标(例如基于规则的警报或绊线)转移到适应更广泛背景视角的行为指标。与网络系统类似,生物系统一直存在于资源受限的敌对环境中,在这种环境中,行为会根据环境进行调整。因此,我们将生物系统视为解决基于行为的网络挑战的灵感。在本文中,我们介绍了LINEBACKER,这是一种基于行为模型的方法,用于识别网络流量中的异常事件,并介绍了这种生物启发和统计模型协同工作的方法的设计,从而为系统集合产生个性化警报。这些模型在历史数据上运行的初步结果与支持现实世界网络操作的插件一起呈现。
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