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Quantum computation for action selection using reinforcement learning

机译:使用强化学习进行动作选择的量子计算

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This paper proposes a novel action selection method based on quantum computation and reinforcement learning (RL). Inspired by the advantages of quantum computation, the state/action in a RL system is represented with quantum superposition state. The probability of action eigenvalue is denoted by probability amplitude, which is updated according to rewards. And the action selection is carried out by observing quantum state according to collapse postulate of quantum measurement. The results of simulated experiments show that quantum computation can be effectively used to action selection and decision making through speeding up learning. This method also makes a good tradeoff between exploration and exploitation for RL using probability characteristics of quantum theory.
机译:本文提出了一种基于量子计算和强化学习(RL)的新型动作选择方法。受量子计算优势的启发,RL系统中的状态/作用用量子叠加态表示。动作特征值的概率由概率幅度表示,该幅度根据奖励进行更新。并且根据量子测量的崩溃假设通过观察量子状态来进行动作选择。仿真实验结果表明,通过加速学习,量子计算可有效地用于行动选择和决策。该方法还利用量子理论的概率特征在RL的勘探与开发之间进行了很好的权衡。

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