(TSs) and power allocation for time-critical non-orthogonal multiple access (NOMA) systems.
The original problem is non-linear/non-convex with discrete variables, leading to high
computational complexity in conventional iterative methods. Towards an efficient solution,
we train deep neural networks to perform fast and high-accuracy predictions to tackle the
difficult combinatorial parts, ie, determining the minimum consumed TSs and user-TS …