Quantum Reinforcement Learning
Quantum reinforcement learning (QRL) aims to leverage quantum computing principles to enhance the efficiency and performance of reinforcement learning algorithms, particularly in tackling complex sequential decision-making problems. Current research focuses on developing hybrid quantum-classical models, often employing variational quantum circuits within established RL frameworks like deep Q-networks and actor-critic methods, and exploring the use of quantum-inspired algorithms like simulated annealing for optimization. This burgeoning field holds significant promise for accelerating the training of RL agents and potentially achieving superior performance in applications ranging from drug discovery and financial market prediction to robotics and quantum control, although the extent of practical quantum advantage remains an active area of investigation.
Papers
Hamiltonian-based Quantum Reinforcement Learning for Neural Combinatorial Optimization
Georg Kruse, Rodrigo Coehlo, Andreas Rosskopf, Robert Wille, Jeanette Miriam Lorenz
Hype or Heuristic? Quantum Reinforcement Learning for Join Order Optimisation
Maja Franz, Tobias Winker, Sven Groppe, Wolfgang Mauerer