2023
DOI: 10.1109/tccn.2022.3228584
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Use Coupled LSTM Networks to Solve Constrained Optimization Problems

Abstract: Gradient-based iterative algorithms have been widely used to solve optimization problems, including resource sharing and network management. When system parameters change, it requires a new solution independent of the previous parameter settings from the iterative methods. Therefore, we propose a learning approach that can quickly produce optimal solutions over a range of system parameters for constrained optimization problems. Two Coupled Long Short-Term Memory networks (CLSTMs) are proposed to find the optim… Show more

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