A QAOA-augmented quantum RL framework achieves faster training convergence and handles larger vehicle routing instances than standard QRL or Grover adaptive search.
Learning to branch in combinatorial optimization with graph pointer networks
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Hybrid Quantum Reinforcement Learning with QAOA for Improved Vehicle Routing Optimization
A QAOA-augmented quantum RL framework achieves faster training convergence and handles larger vehicle routing instances than standard QRL or Grover adaptive search.