论文标题
在激光动力学中控制混乱的行程以进行增强学习
Controlling chaotic itinerancy in laser dynamics for reinforcement learning
论文作者
论文摘要
光子人工智能引起了人们对加速机器学习的极大兴趣。但是,唯一的光学特性尚未完全用于实现高阶功能。混乱的行程具有多个准吸收器中的自发瞬态动力学,可用于实现大脑样功能。在本文中,我们提出了一种在多模式半导体激光器中控制混沌行线的方法,以求解机器学习任务(称为多臂强盗问题),这对于增强学习至关重要。所提出的方法在模式竞争动力学中利用超快混沌巡回动态通过光学注射控制。我们发现,探索机制与常规搜索算法完全不同,并且高度可扩展,对大规模强盗问题的常规方法表现出色。这项研究铺平了利用混乱的巡回术来有效地将复杂的机器学习任务作为光子硬件加速器的方法。
Photonic artificial intelligence has attracted considerable interest in accelerating machine learning; however, the unique optical properties have not been fully utilized for achieving higher-order functionalities. Chaotic itinerancy, with its spontaneous transient dynamics among multiple quasi-attractors, can be employed to realize brain-like functionalities. In this paper, we propose a method for controlling the chaotic itinerancy in a multi-mode semiconductor laser to solve a machine learning task, known as the multi-armed bandit problem, which is fundamental to reinforcement learning. The proposed method utilizes ultrafast chaotic itinerant motion in mode competition dynamics controlled via optical injection. We found that the exploration mechanism is completely different from a conventional searching algorithm and is highly scalable, outperforming the conventional approaches for large-scale bandit problems. This study paves the way to utilize chaotic itinerancy for effectively solving complex machine learning tasks as photonic hardware accelerators.