A dataflow system for anomaly detection and analysis

A. Bara, Xinyu Niu, W. Luk
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引用次数: 4

Abstract

This paper proposes DeADA, a dataflow architecture incorporating an automated, unsupervised and online learning algorithm. Compared with 24 core software implementations, DeADA achieves up to 6.17 times lower data drop rate and 10.7 times higher power efficiency. More importantly, experimental results for the Heartbleed case study suggest that DeADA is capable of detecting unknown attacks under network speeds of at least 18Mbps, a feature which is essential for modern network intrusion detection.
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一个用于异常检测和分析的数据流系统
本文提出了一种包含自动、无监督和在线学习算法的数据流体系结构DeADA。与24核软件实现相比,DeADA的数据丢失率降低了6.17倍,功耗效率提高了10.7倍。更重要的是,心脏出血案例研究的实验结果表明,DeADA能够在至少18Mbps的网络速度下检测未知攻击,这是现代网络入侵检测必不可少的功能。
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