Intrusion detection model based on non-symmetric convolution auto-encode and support vector machine

Network intrusion detection system plays an important role in protecting network security.With the continuous development of science and technology,the current intrusion technology cannot cope with the modern complex and volatile network abnormal traffic,without taking into account the scalability,s...

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Main Author: Jialin WANG,Jiqiang LIU,Di ZHAO,Yingdi WANG,Yingxiao XIANG,Tong CHEN,Endong TONG,Wenjia NIU
Format: Article
Language:English
Published: POSTS&TELECOM PRESS Co., LTD 2018-11-01
Series:网络与信息安全学报
Subjects:
Online Access:http://www.infocomm-journal.com/cjnis/CN/10.11959/j.issn.2096-109x.2018086
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author Jialin WANG,Jiqiang LIU,Di ZHAO,Yingdi WANG,Yingxiao XIANG,Tong CHEN,Endong TONG,Wenjia NIU
author_facet Jialin WANG,Jiqiang LIU,Di ZHAO,Yingdi WANG,Yingxiao XIANG,Tong CHEN,Endong TONG,Wenjia NIU
author_sort Jialin WANG,Jiqiang LIU,Di ZHAO,Yingdi WANG,Yingxiao XIANG,Tong CHEN,Endong TONG,Wenjia NIU
collection DOAJ
description Network intrusion detection system plays an important role in protecting network security.With the continuous development of science and technology,the current intrusion technology cannot cope with the modern complex and volatile network abnormal traffic,without taking into account the scalability,sustainability and training time of the detection technology.Aiming at these problems,a new deep learning method was proposed,which used unsupervised non-symmetric convolutional auto-encoder to learn the characteristics of the data.In addition,a new method based on the combination of non-symmetric convolutional auto-encoder and multi-class support vector machine was proposed.Experiments on the data set of KDD99 show that the method achieves good results,significantly reduces training time compared with other methods,and further improves the network intrusion detection technology.
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spelling doaj.art-ab0b352d7e164f8a84382c4a829de71b2022-12-22T00:29:44ZengPOSTS&TELECOM PRESS Co., LTD网络与信息安全学报2096-109X2018-11-01411576810.11959/j.issn.2096-109x.2018086Intrusion detection model based on non-symmetric convolution auto-encode and support vector machineJialin WANG,Jiqiang LIU,Di ZHAO,Yingdi WANG,Yingxiao XIANG,Tong CHEN,Endong TONG,Wenjia NIU 0Beijing Key Laboratory of Security and Privacy in Intelligent Transportation,Beijing Jiaotong University,Beijing 100044,ChinaNetwork intrusion detection system plays an important role in protecting network security.With the continuous development of science and technology,the current intrusion technology cannot cope with the modern complex and volatile network abnormal traffic,without taking into account the scalability,sustainability and training time of the detection technology.Aiming at these problems,a new deep learning method was proposed,which used unsupervised non-symmetric convolutional auto-encoder to learn the characteristics of the data.In addition,a new method based on the combination of non-symmetric convolutional auto-encoder and multi-class support vector machine was proposed.Experiments on the data set of KDD99 show that the method achieves good results,significantly reduces training time compared with other methods,and further improves the network intrusion detection technology.http://www.infocomm-journal.com/cjnis/CN/10.11959/j.issn.2096-109x.2018086intrusion detection technologyconvolutional auto-encodersupport vector machinenetwork security
spellingShingle Jialin WANG,Jiqiang LIU,Di ZHAO,Yingdi WANG,Yingxiao XIANG,Tong CHEN,Endong TONG,Wenjia NIU
Intrusion detection model based on non-symmetric convolution auto-encode and support vector machine
网络与信息安全学报
intrusion detection technology
convolutional auto-encoder
support vector machine
network security
title Intrusion detection model based on non-symmetric convolution auto-encode and support vector machine
title_full Intrusion detection model based on non-symmetric convolution auto-encode and support vector machine
title_fullStr Intrusion detection model based on non-symmetric convolution auto-encode and support vector machine
title_full_unstemmed Intrusion detection model based on non-symmetric convolution auto-encode and support vector machine
title_short Intrusion detection model based on non-symmetric convolution auto-encode and support vector machine
title_sort intrusion detection model based on non symmetric convolution auto encode and support vector machine
topic intrusion detection technology
convolutional auto-encoder
support vector machine
network security
url http://www.infocomm-journal.com/cjnis/CN/10.11959/j.issn.2096-109x.2018086
work_keys_str_mv AT jialinwangjiqiangliudizhaoyingdiwangyingxiaoxiangtongchenendongtongwenjianiu intrusiondetectionmodelbasedonnonsymmetricconvolutionautoencodeandsupportvectormachine