This study presents an optimized approach for intrusion detection leveraging recurrent neural network on network traffic datasets. We preprocess the data to handle temporal dynamics and design recurrent neural network architectures tailored to the dataset characteristics. We incorporate long short term memory layers for temporal modeling and implement dropout regularization and other optimization techniques to expedite training. Our optimized recurrent neural network consistently outperform other neural network architectures, particularly in internet of things and traditional network environments.
목차
Abstract 1. Introduction 2. Related works 3. Methods 3.1. Dataset 3.2. Experiment setup 4. Experiment result 5. Conclusions Acknowledgement References
저자
Maira Khalid [ Dept. of AI Convergence Network Ajou University ]
Laura Tileutay [ Dept. of AI Convergence Network Ajou University ]
Byeong-hee Roh [ Dept. of AI Convergence Network Ajou University ]
Corresponding Author
Young-Bae Ko [ Dept. of AI Convergence Network Ajou University ]