Selection of Effective Features for BGP Anomaly Detection

Tatsuya Arai, Kotaro Nakano, B. Chakraborty
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引用次数: 3

Abstract

order Gateway Protocol (BGP) is the internet’s default protocol for managing connectivity between Autonomous Systems (AS). Anomalies happen to occur time to time and it is a threat to cyber security. There are various types of BGP anomalies and over the years researches have been done for their detection. Here machine learning techniques are used for detection of BGP anomaly from BGP update messages by considering the problem as a two class classification problem. A set of 35 features are extracted from BGP update messages for Slammer, Nimda and Code Red I attacks. The main objective of this study is to find out important features for detection of BGP anomaly. Popular feature selection algorithms, wrapper as well as several filter based algorithms are used for feature ranking. It is found that at most top 10 features are sufficient for the best classification accuracy which is verified by several classifiers.
BGP异常检测的有效特征选择
顺序网关协议(BGP)是互联网用于管理自治系统(AS)之间连接的默认协议。异常情况时有发生,对网络安全构成威胁。BGP异常类型繁多,多年来人们对其检测方法进行了大量的研究。本文将机器学习技术用于从BGP更新消息中检测BGP异常,并将问题视为两类分类问题。针对Slammer、Nimda和红色代码I攻击,从BGP更新消息中提取了一组35个特征。本研究的主要目的是找出BGP异常检测的重要特征。常用的特征选择算法、包装器以及几种基于过滤器的算法用于特征排序。发现最多前10个特征足以达到最佳分类精度,并通过多个分类器验证。
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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