Quantum computation has a strong implication for advancing the current limitation of machine learning algorithms to deal with higher data dimensions or reducing the overall training parameters for a deep neural network model. Based on a gate-based quantum computer, a parameterized quantum circuit was designed to solve a model-free reinforcement learning problem with the deep-Q learning method. This research has investigated and evaluated its potential. Therefore, a novel PQC based on the latest Qiskit and PyTorch framework was designed and trained to compare with a full-classical deep neural network with and without integrated PQC. At the end of the research, the research draws its conclusion and prospects on developing deep quantum learning in solving a maze problem or other reinforcement learning problems.
翻译:量子计算对于推进当前机器学习算法处理更高数据维度或减少深度神经网络模型的总训练参数具有强烈的意义。本研究基于基于门的量子计算机,设计了一个参数化的量子电路,采用深度Q学习方法来解决一种无模型的强化学习问题。本研究已经调查和评估了其潜力。因此,设计了一种基于最新的Qiskit和PyTorch框架的新型PQC,并对其进行了训练,以与全经典深度神经网络相比较,带有和不带有整合PQC。在研究结束时,研究得出结论并展望深度量子学习在解决迷宫问题或其他强化学习问题中的发展前景。