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An Efficient Intrusion Detection Framework in Software-Defined Networking for Cybersecurity Applications 被引量:1
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作者 Ghalib H.Alshammri Amani K.Samha +2 位作者 Ezz El-Din Hemdan Mohammed Amoon Walid El-Shafai 《Computers, Materials & Continua》 SCIE EI 2022年第8期3529-3548,共20页
Network management and multimedia data mining techniques have a great interest in analyzing and improving the network traffic process.In recent times,the most complex task in Software Defined Network(SDN)is security,w... Network management and multimedia data mining techniques have a great interest in analyzing and improving the network traffic process.In recent times,the most complex task in Software Defined Network(SDN)is security,which is based on a centralized,programmable controller.Therefore,monitoring network traffic is significant for identifying and revealing intrusion abnormalities in the SDN environment.Consequently,this paper provides an extensive analysis and investigation of the NSL-KDD dataset using five different clustering algorithms:K-means,Farthest First,Canopy,Density-based algorithm,and Exception-maximization(EM),using the Waikato Environment for Knowledge Analysis(WEKA)software to compare extensively between these five algorithms.Furthermore,this paper presents an SDN-based intrusion detection system using a deep learning(DL)model with the KDD(Knowledge Discovery in Databases)dataset.First,the utilized dataset is clustered into normal and four major attack categories via the clustering process.Then,a deep learning method is projected for building an efficient SDN-based intrusion detection system.The results provide a comprehensive analysis and a flawless reasonable study of different kinds of attacks incorporated in the KDD dataset.Similarly,the outcomes reveal that the proposed deep learning method provides efficient intrusion detection performance compared to existing techniques.For example,the proposed method achieves a detection accuracy of 94.21%for the examined dataset. 展开更多
关键词 Deep neural network DL WEKA network traffic intrusion and anomaly detection SDN clustering and classification KDD dataset
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Integration of Learning Algorithm on Fuzzy Min-Max Neural Networks
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作者 胡静 罗宜元 《Journal of Shanghai Jiaotong university(Science)》 EI 2017年第6期733-741,共9页
An integrated fuzzy min-max neural network(IFMMNN) is developed to avoid the classification result influenced by the input sequence of training samples, and the learning algorithm can be used as pure clustering,pure c... An integrated fuzzy min-max neural network(IFMMNN) is developed to avoid the classification result influenced by the input sequence of training samples, and the learning algorithm can be used as pure clustering,pure classification, or a hybrid clustering classification. Three experiments are designed to realize the aim. The serial input of samples is changed to parallel input, and the fuzzy membership function is substituted by similarity matrix. The experimental results show its superiority in contrast with the original method proposed by Simpson. 展开更多
关键词 fuzzy min-max neural network(FMMNN) supervised and unsupervised learning clustering and classification learning algorithm SIMILARITY
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