Xinglan ZHANG, Shenglin YIN. Intrusion detection model of random attention capsule network based on variable fusion[J]. Journal on Communications, 2020, 41(11): 160-168.
DOI:
Xinglan ZHANG, Shenglin YIN. Intrusion detection model of random attention capsule network based on variable fusion[J]. Journal on Communications, 2020, 41(11): 160-168. DOI: 10.11959/j.issn.1000-436x.2020220.
Intrusion detection model of random attention capsule network based on variable fusion
In order to enhance the accuracy and generalization of the detection model
an intrusion detection model of random attention capsule network with variable fusion was proposed.Through dynamic feature fusion
the model could better capture data features.At the same time
random attention mechanism was used to reduce the dependence on training data and make the model more generalization.The model was validated on NSL-KDD and UNSW-NB15 datasets.The experimental results show that the accuracy of the model on the two test sets is 99.49% and 98.60% respectively.
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LIAO H J , LIN C H R , LIN Y C , et al . Intrusion detection system:a comprehensive review [J ] . Journal of Network & Computer Applications , 2013 , 36 ( 1 ): 16 - 24 .
KIM K , AMINANTO M E . Deep learning in intrusion detection perspective:Overview and further challenges [C ] // International Workshop on Big Data & Information Security . Piscataway:IEEE Press , 2018 : 5 - 10 .
TANG T A , MHAMDI L , MCLERNON D , et al . Deep learning approach for network intrusion detection in software defined networking [C ] // International Conference on Wireless Networks & Mobile Communications . Piscataway:IEEE Press , 2016 ,doi:10.1109/WINCOM.2016.7777224.
GU G X , CHEN C T , BUEHLER M J . De novo composite design based on machine learning algorithm [J ] . Extreme Mechanics Letters , 2017 , 18 : 19 - 28 .
VINAYAKUMAR R , SOMAN K P , POORNACHANDRAN P . Applying convolutional neural network for network intrusion detection [C ] // 2017 International Conference on Advances in Computing,Communications and Informatics . Piscataway:IEEE Press , 2017 ,doi:10.1109/ICACCI.2017.8126009.
AL-ZEWAIRI M , ALMAJALI S , AWAJAN A . Experimental evaluation of a multi-layer feed-forward artificial neural network classifier for network intrusion detection system [C ] // The 2017 International Conference on New Trends in Computing Sciences . Piscataway:IEEE Press , 2018 : 167 - 172 .
VINAYAKUMAR R , ALAZAB M , KP S , et al . Deep learning approach for intelligent intrusion detection system [J ] . IEEE Access , 2019 PP ( 99 ): 1 - 1 .
AZIZJON M , JUMABEK A , KIM W . 1D CNN based network intrusion detection with normalization on imbalanced data [C ] // 2020 International Conference on Artificial Intelligence in Information and Communication . Piscataway:IEEE Press , 2020 ,doi:10.1109/ICAIIC48513.2020.9064976.
KIM J , KIM J , THU H L T , et al . Long short term memory recurrent neural network classifier for intrusion detection [C ] // International Conference on Platform Technology & Service . Piscataway:IEEE Press , 2016 ,doi:10.1109/PlatCon.2016.7456805.
CHEN Y , ABRAHAM A , YANG J . Feature selection and intrusion detection using hybrid flexible neural tree [C ] // International Symposium on Neural Networks . Berlin:Springer , 2005 : 439 - 444 .
SABOUR S , FROSST N , HINTON G E . Dynamic routing between capsules [C ] // Proceeding of the Neural Information Processing Systems . New York:ACM Press , 2017 : 3856 - 3866 .
HINTON G E , SABOUR S , FROSST N . Matrix capsules with EM routing [C ] // Sixth International Conference on Learning Representations . 2018 : 1 - 9 .
TAY Y , BAHRI D , METZLER D , et al . Synthesizer:rethinking self-attention in transformer models [J ] . arXiv Preprint,arXiv:2005.00743v1 , 2020
TAVALLAEE M , BAGHERI E , LU W , et al . A detailed analysis of the KDD CUP 99 data set [C ] // 2009 IEEE Symposium on Computational Intelligence for Security and Defense Applications . Piscataway:IEEE Press , 2009 : 1 - 6 .
DHANABAL L , SHANTHARAJAH S P . A study on NSL-KDD dataset for intrusion detection system based on classification algorithms [J ] . International Journal of Advanced Research in Computer and Communication Engineering , 2015 , 4 ( 6 ): 446 - 452 .
MOUSTAFA N , SLAY J . UNSW-NB15:a comprehensive data set for network intrusion detection systems (UNSW-NB15 network data set) [C ] // Military Communications and Information Systems Conference . Piscataway:IEEE Press , 2015 :16.
DONG B , WANG X . Comparison deep learning method to traditional methods using for network intrusion detection [C ] // IEEE International Conference on Communication Software & Networks . Piscataway:IEEE Press , 2016 : 581 - 585 .