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Scalable photonic reinforcement learning by time-division multiplexing of laser chaos
[article]
2018
arXiv
pre-print
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 solve the two-armed bandit problem efficiently, which requires decision making concerning a class of difficult trade-offs called the exploration-exploitation dilemma. However, only two selections were employed in that
arXiv:1803.09425v1
fatcat:emsfpcocovg6folfzbw5biwcam