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Anomaly Detection using prior knowledge: application to TCP/IP traffic

机译:使用先验知识进行异常检测:应用于TCP / IP流量

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摘要

This article introduces an approach to anomaly intrusion detection based on a combination of supervised and unsupervised machine learning algorithms. The main objective of this work is an effective modeling of the TCP/IP network traffic of an organization that allows the detection of anomalies with an efficient percentage of false positives for a production environment. The architecture proposed uses a hierarchy of Self-Organizing Maps for traffic modeling combined with Learning Vector Quantization techniques to ultimately classify network packets. The architecture is developed using the known SNORT intrusion detection system to preprocess network traffic. In comparison to other techniques, results obtained in this work show that acceptable levels of compromise between attack detection and false positive rates can be achieved.
机译:本文介绍了一种基于监督和无监督机器学习算法相结合的异常入侵检测方法。这项工作的主要目的是对组织的TCP / IP网络流量进行有效的建模,从而可以针对生产环境使用有效百分比的误报检测异常。提出的体系结构使用自组织映射的层次结构进行流量建模,并结合学习矢量量化技术对网络数据包进行最终分类。该体系结构是使用已知的SNORT入侵检测系统开发的,用于预处理网络流量。与其他技术相比,这项工作获得的结果表明,可以在攻击检测和误报率之间达成可接受的折衷水平。

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