FCNN: An Efficient Intrusion Detection Method Based on Raw Network Traffic

When traditional machine learning methods are applied to network intrusion detection, they need to rely on expert knowledge to extract feature vectors in advance, which incurs lack of flexibility and versatility. Recently, deep learning methods have shown superior performance compared with tradition...

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Bibliographic Details
Main Authors: Yue Wang, Yiming Jiang, Julong Lan
Format: Article
Language:English
Published: Hindawi-Wiley 2021-01-01
Series:Security and Communication Networks
Online Access:http://dx.doi.org/10.1155/2021/5533269
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spelling doaj-3809b0218b62487997cf6dca431c52c82021-06-28T01:51:12ZengHindawi-WileySecurity and Communication Networks1939-01222021-01-01202110.1155/2021/5533269FCNN: An Efficient Intrusion Detection Method Based on Raw Network TrafficYue Wang0Yiming Jiang1Julong Lan2Information Technology InstituteInformation Technology InstituteInformation Technology InstituteWhen traditional machine learning methods are applied to network intrusion detection, they need to rely on expert knowledge to extract feature vectors in advance, which incurs lack of flexibility and versatility. Recently, deep learning methods have shown superior performance compared with traditional machine learning methods. Deep learning methods can learn the raw data directly, but they are faced with expensive computing cost. To solve this problem, a preprocessing method based on multipacket input unit and compression is proposed, which takes m data packets as the input unit to maximize the retention of information and greatly compresses the raw traffic to shorten the data learning and training time. In our proposed method, the CNN network structure is optimized and the weights of some convolution layers are assigned directly by using the Gabor filter. Experimental results on the benchmark data set show that compared with the existing models, the proposed method improves the detection accuracy by 2.49% and reduces the training time by 62.1%. In addition, the experiments show that the proposed compression method has obvious advantages in detection accuracy and computational efficiency compared with the existing compression methods.http://dx.doi.org/10.1155/2021/5533269
collection DOAJ
language English
format Article
sources DOAJ
author Yue Wang
Yiming Jiang
Julong Lan
spellingShingle Yue Wang
Yiming Jiang
Julong Lan
FCNN: An Efficient Intrusion Detection Method Based on Raw Network Traffic
Security and Communication Networks
author_facet Yue Wang
Yiming Jiang
Julong Lan
author_sort Yue Wang
title FCNN: An Efficient Intrusion Detection Method Based on Raw Network Traffic
title_short FCNN: An Efficient Intrusion Detection Method Based on Raw Network Traffic
title_full FCNN: An Efficient Intrusion Detection Method Based on Raw Network Traffic
title_fullStr FCNN: An Efficient Intrusion Detection Method Based on Raw Network Traffic
title_full_unstemmed FCNN: An Efficient Intrusion Detection Method Based on Raw Network Traffic
title_sort fcnn: an efficient intrusion detection method based on raw network traffic
publisher Hindawi-Wiley
series Security and Communication Networks
issn 1939-0122
publishDate 2021-01-01
description When traditional machine learning methods are applied to network intrusion detection, they need to rely on expert knowledge to extract feature vectors in advance, which incurs lack of flexibility and versatility. Recently, deep learning methods have shown superior performance compared with traditional machine learning methods. Deep learning methods can learn the raw data directly, but they are faced with expensive computing cost. To solve this problem, a preprocessing method based on multipacket input unit and compression is proposed, which takes m data packets as the input unit to maximize the retention of information and greatly compresses the raw traffic to shorten the data learning and training time. In our proposed method, the CNN network structure is optimized and the weights of some convolution layers are assigned directly by using the Gabor filter. Experimental results on the benchmark data set show that compared with the existing models, the proposed method improves the detection accuracy by 2.49% and reduces the training time by 62.1%. In addition, the experiments show that the proposed compression method has obvious advantages in detection accuracy and computational efficiency compared with the existing compression methods.
url http://dx.doi.org/10.1155/2021/5533269
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AT yimingjiang fcnnanefficientintrusiondetectionmethodbasedonrawnetworktraffic
AT julonglan fcnnanefficientintrusiondetectionmethodbasedonrawnetworktraffic
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