A Dual-Objective CART Model for Throughput Estimation and Real-Time Malicious Activity Detection in 6G Networks
DOI:
https://doi.org/10.48047/a46tyh57Keywords:
6G communication networks, Graph Neural Networks (GNN), intrusion detection systems,machine learning,throughput predictionAbstract
The emergence of sixth generation (6G) communication networks has created a growing need for intelligent, secure, and high
performance network management solutions capable of handling increasingly complex communication environments. Conventional network monitoring and intrusion detection
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Published
10.07.2026
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How to Cite
A Dual-Objective CART Model for Throughput Estimation and Real-Time Malicious Activity Detection in 6G Networks . (2026). International Journal of Information and Electronics Engineering, 16(2), 581-591. https://doi.org/10.48047/a46tyh57