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Hybrid Tensor Flow DNN and Modified Residual Network Approach for Cyber Security Threats Detection in Internet of Things

International journal of computer science and network security : IJCSNS, v.22 no.10, 2022년, pp.237 - 245  

Alshehri, Abdulrahman Mohammed (Riyadh Schools) ,  Fenais, Mohammed Saeed (Riyadh Schools)

Abstract AI-Helper 아이콘AI-Helper

The prominence of IoTs (Internet of Things) and exponential advancement of computer networks has resulted in massive essential applications. Recognizing various cyber-attacks or anomalies in networks and establishing effective intrusion recognition systems are becoming increasingly vital to current ...

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표/그림 (8)

참고문헌 (26)

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