论马尔可夫决策过程中基于投影模拟的强化学习的收敛性

IF 4.1 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Quantum Machine Intelligence Pub Date : 2020-01-01 Epub Date: 2020-11-05 DOI:10.1007/s42484-020-00023-9
W L Boyajian, J Clausen, L M Trenkwalder, V Dunjko, H J Briegel
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摘要

近年来,人们对利用量子效应增强机器学习任务的兴趣明显增加。许多加快有监督和无监督学习的算法已经建立。在更广泛的强化学习背景下,利用量子资源的首个框架是投影模拟。投影模拟提出了一种基于代理的强化学习方法,其设计方式可支持基于量子行走的加速。虽然投影模拟的经典变体已与常见的强化学习算法进行了基准测试,但很少有人对其在标准学习场景中的性能进行正式的理论分析。在本文中,我们对该模型的特性进行了详细的正式讨论。具体来说,我们证明了投影模拟模型的一个版本(可理解为一种强化学习方法)在一大类马尔可夫决策过程中收敛到了最优行为。这一证明表明,物理启发的强化学习方法可以保证收敛。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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On the convergence of projective-simulation-based reinforcement learning in Markov decision processes.

In recent years, the interest in leveraging quantum effects for enhancing machine learning tasks has significantly increased. Many algorithms speeding up supervised and unsupervised learning were established. The first framework in which ways to exploit quantum resources specifically for the broader context of reinforcement learning were found is projective simulation. Projective simulation presents an agent-based reinforcement learning approach designed in a manner which may support quantum walk-based speedups. Although classical variants of projective simulation have been benchmarked against common reinforcement learning algorithms, very few formal theoretical analyses have been provided for its performance in standard learning scenarios. In this paper, we provide a detailed formal discussion of the properties of this model. Specifically, we prove that one version of the projective simulation model, understood as a reinforcement learning approach, converges to optimal behavior in a large class of Markov decision processes. This proof shows that a physically inspired approach to reinforcement learning can guarantee to converge.

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CiteScore
7.60
自引率
4.20%
发文量
29
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