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Composition of Hybrid Deep Learning Model and Feature Optimization for Intrusion Detection System

Azriel HenryDepartment of Computer Sciences and Engineering, Institute of Advanced Research, Gandhinagar 382426, Gujarat, IndiaSunil GautamDepartment of Computer Science and Engineering, Institute of Technology, Nirma University, Ahmedabad 382481, Gujarat, IndiaSamrat KhannaDepartment of Computer Sciences and Engineering, Institute of Advanced Research, Gandhinagar 382426, Gujarat, IndiaKhaled M. RabieDepartment of Electrical and Electronic Engineering Technology, University of Johannesburg, Auckland Park, P.O. Box 524, Johannesburg 2006, South AfricaThokozani ShongweDepartment of Electrical and Electronic Engineering Technology, University of Johannesburg, Auckland Park, P.O. Box 524, Johannesburg 2006, South AfricaPronaya BhattacharyaBhisham SharmaChitkara University Institute of Engineering and Technology, Chitkara University, Rajpura 140401, Punjab, IndiaS. ChowdhuryDepartment of Masters of Computer Application, Sri Venkateswara College of Engineering and Technology (A), Chittoor 517127, Andhra Pradesh, India
2023en
ABI

Аннотация

Recently, with the massive growth of IoT devices, the attack surfaces have also intensified. Thus, cybersecurity has become a critical component to protect organizational boundaries. In networks, Intrusion Detection Systems (IDSs) are employed to raise critical flags during network management. One aspect is malicious traffic identification, where zero-day attack detection is a critical problem of study. Current approaches are aligned towards deep learning (DL) methods for IDSs, but the success of the DL mechanism depends on the feature learning process, which is an open challenge. Thus, in this paper, the authors propose a technique which combines both CNN, and GRU, where different CNN-GRU combination sequences are presented to optimize the network parameters. In the simulation, the authors used the CICIDS-2017 benchmark dataset and used metrics such as precision, recall, False Positive Rate (FPR), True Positive Rate (TRP), and other aligned metrics. The results suggest a significant improvement, where many network attacks are detected with an accuracy of 98.73%, and an FPR rate of 0.075. We also performed a comparative analysis with other existing techniques, and the obtained results indicate the efficacy of the proposed IDS scheme in real cybersecurity setups.

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