TY - JOUR ID - 9838 TI - Deep Learning Approach For Intelligent Intrusion Detection System JO - International Research Journal on Advanced Science Hub JA - IRJASH LA - en SN - AU - M, Maneesha AU - V, Savitha AU - S, Jeevika AU - G, Nithiskumar AU - K, Sangeetha AD - Department of Computer Science and Engineering, SNS College of Technology, Coimbatore, India. Y1 - 2021 PY - 2021 VL - 03 IS - Special Issue ICARD-2021 3S SP - 45 EP - 48 KW - Intrusion detection system KW - Cyber Attacks KW - Deep Neural Networks DO - 10.47392/irjash.2021.061 N2 - This paper focuses on preventing cyber attacks, which are common on any device connected to the internet. In order to create an intrusion detection system (IDS) that can recognise and differentiate cyber-attacks at the network and host levels in a timely and automated manner, machine learning techniques are widely used. A deep neural network (DNN) is a form of deep learning model being researched for use in developing a scalable and efficient intrusion detection system (IDS) capable of detecting and classifying unexpected and unpredictable cyber-attacks.Since network behaviour is constantly changing and attacks are evolving at a rapid pace, it is critical to analyse various datasets that have been produced over time using both static and dynamic approaches. This type of research helps in the discovery of the most effective detection algorithm. UR - https://rspsciencehub.com/article_9838.html L1 - https://rspsciencehub.com/article_9838_a9e66ea96a3dc68afa18be503169f925.pdf ER -