A survey of ML and DL methods for resource allocation in wireless IoT networks, covering HetNets, MIMO, D2D, and NOMA along with future research directions.
Recent advances in radio resource management for heterogeneous lte/lte-a networks,
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Machine Learning for Resource Management in Cellular and IoT Networks: Potentials, Current Solutions, and Open Challenges
A survey of ML and DL methods for resource allocation in wireless IoT networks, covering HetNets, MIMO, D2D, and NOMA along with future research directions.