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   Anomaly-Based Network Intrusion Detection Using Bidirectional Long Short Term Memory and Convolutional Neural Network  
   
نویسنده Al-Turaiki Isra ,Altwaijry Najwa ,Agil Abeer ,Aljodhi Haya ,Alharbi Sara ,Alqassem Lina
منبع The Isc International Journal Of Information Security - 2020 - دوره : 12 - شماره : 3 - صفحه:37 -44
چکیده    With present-day technological advancements, the number of devices connected to the internet has increased dramatically. cybersecurity attacks are increasingly becoming a threat to individuals and organizations. contemporary security frameworks incorporate network intrusion detection systems (nids). these systems are an essential component for ensuring the security of computer networks against attacks. in this paper, two deep learning architectures are proposed for both binary and multi-class classification of network attacks. the models, cnn-ids and lstm-ids, are based on convolutional neural network and long short term memory architectures, respectively. the models are evaluated using the well-known nsl-kdd dataset. the performance is measured in terms of accuracy, precision, recall, and fmeasure. experimental results show that the models achieve good performance in terms of accuracy and recall. network intrusion detection systems are an integral part of contemporary networks. they provide administrators with an early warning for known and unknown attacks. in this paper, two deep learning architectures to aid administrators in detecting network attacks are outlined
کلیدواژه Network Intrusion Detection Systems ,Deep Learning ,Long Short Term Memory ,Lstm ,Convolutional Neural Network ,Cnn
آدرس King Saud University, College Of Computer And Information Sciences, Information Technology Department, Saudi Arabia, King Saud University, College Of Computer And Information Sciences, Information Technology Department, Saudi Arabia, King Saud University, College Of Computer And Information Sciences, Information Technology Department, Saudi Arabia, King Saud University, College Of Computer And Information Sciences, Information Technology Department, Saudi Arabia, King Saud University, College Of Computer And Information Sciences, Information Technology Department, Saudi Arabia, King Saud University, College Of Computer And Information Sciences, Information Technology Department, Saudi Arabia
پست الکترونیکی 436204540@student.ksu.edu.sa
 
     
   
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