作者
Lucas Airam C De Souza, Gustavo F Camilo, Miguel Elias M Campista, Luís Henrique MK Costa, Otto Carlos MB Duarte
发表日期
2022/12/4
研讨会论文
GLOBECOM 2022-2022 IEEE Global Communications Conference
页码范围
2074-2079
出版商
IEEE
简介
Flow classification employs machine learning techniques to identify attacks on computer networks. This classification relies on quantitative features that synthesize the information of packets from the same flow. Conventional features, however, such as packet size and the number of bytes, generate redundancies and do not capture the temporal correlations between the packets in a flow. Automated network attacks generate periodic patterns observable through spectral decomposition, which facilitates classification. This paper proposes FENED (Feature Extraction by Network spEctrum Decomposition), a method to extract features from network data. We consider the packet-arrived order within the same flow using the fast Fourier transform for binary classification. The proposed feature vector contains the module of the spectral components of the flow. Experimental results show that FENED outperforms conventional …
引用总数
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