Efficient circuit implementation for coined quantum walks on binary trees and application to reinforcement learning

Thomas Mullor, David Vigouroux, Louis Béthune
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Abstract

Quantum walks on binary trees are used in many quantum algorithms to achieve important speedup over classical algorithms. The formulation of this kind of algorithms as quantum circuit presents the advantage of being easily readable, executable on circuit based quantum computers and simulators and optimal on the usage of resources. We propose a strategy to compose quantum circuit that performs quantum walk on binary trees following universal gate model quantum computation principles. We give a particular attention to NAND formula evaluation algorithm as it could have many applications in game theory and reinforcement learning. We therefore propose an application of this algorithm and show how it can be used to train a quantum reinforcement learning agent in a two player game environment.
二叉树上量子行走的高效电路实现及其在强化学习中的应用
二叉树上的量子行走被用于许多量子算法中,以获得比经典算法重要的加速。这种算法以量子电路的形式表述,具有易读、可在基于电路的量子计算机和模拟器上执行、优化资源利用等优点。我们提出了一种基于通用门模型量子计算原理的在二叉树上进行量子行走的量子电路组成策略。我们特别关注NAND公式评估算法,因为它在博弈论和强化学习中有许多应用。因此,我们提出了该算法的一个应用,并展示了如何在双人游戏环境中使用它来训练量子强化学习代理。
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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