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Scalable photonic reinforcement learning by time-division multiplexing of laser chaos

机译:通过激光混沌的时分复用进行可扩展的光子强化学习

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摘要

Reinforcement learning involves decision-making in dynamic and uncertain environments and constitutes a crucial element of artificial intelligence. In our previous work, we experimentally demonstrated that the ultrafast chaotic oscillatory dynamics of lasers can be used to efficiently solve the two-armed bandit problem, which requires decision-making concerning a class of difficult trade-offs called the exploration–exploitation dilemma. However, only two selections were employed in that research; hence, the scalability of the laser-chaos-based reinforcement learning should be clarified. In this study, we demonstrated a scalable, pipelined principle of resolving the multi-armed bandit problem by introducing time-division multiplexing of chaotically oscillated ultrafast time series. The experimental demonstrations in which bandit problems with up to 64 arms were successfully solved are presented where laser chaos time series significantly outperforms quasiperiodic signals, computer-generated pseudorandom numbers, and coloured noise. Detailed analyses are also provided that include performance comparisons among laser chaos signals generated in different physical conditions, which coincide with the diffusivity inherent in the time series. This study paves the way for ultrafast reinforcement learning by taking advantage of the ultrahigh bandwidths of light wave and practical enabling technologies.
机译:强化学习涉及动态和不确定环境中的决策,是人工智能的重要组成部分。在我们以前的工作中,我们通过实验证明了激光的超快混沌振荡动力学可用于有效解决两臂匪问题,这需要对一类艰难的权衡取舍进行决策,这称为勘探与开发困境。但是,该研究仅采用了两种选择。因此,应阐明基于激光混沌的强化学习的可扩展性。在这项研究中,我们通过引入混沌振荡的超快时间序列的时分复用,展示了解决多臂匪徒问题的可扩展流水线原理。实验演示了成功解决多达64条手臂的匪徒问题的方法,其中激光混沌时间序列明显优于准周期信号,计算机生成的伪随机数和有色噪声。还提供了详细的分析,其中包括在不同物理条件下生成的激光混沌信号之间的性能比较,这与时间序列固有的扩散率一致。这项研究通过利用光波的超高带宽和实用的使能技术,为超快强化学习铺平了道路。

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