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Quantum Deep Recurrent Reinforcement Learning

Samuel Yen-Chi Chen

202334 citationsDOI

Abstract

Recent advances in quantum computing (QC) and machine learning (ML) have drawn significant attention to the development of quantum machine learning (QML). Reinforcement learning (RL) is one of the ML paradigms which can be used to solve complex sequential decision making problems. Classical RL has been shown to be capable to solve various challenging tasks. However, RL algorithms in the quantum world are still in their infancy. One of the challenges yet to solve is how to train quantum RL in the partially observable environments. In this paper, we approach this challenge through building QRL agents with quantum recurrent neural networks (QRNN). Specifically, we choose the quantum long short-term memory (QLSTM) to be the core of the QRL agent and train the whole model with deep Q-learning. We demonstrate the results via numerical simulations that the QLSTM-DRQN can solve standard benchmark such as Cart-Pole with more stable and higher average scores than classical DRQN with similar architecture and number of model parameters.

Topics & Concepts

Reinforcement learningComputer scienceQuantum machine learningBenchmark (surveying)QuantumArtificial intelligenceObservableQuantum computerDeep learningRecurrent neural networkArtificial neural networkQuantum mechanicsGeographyPhysicsGeodesyQuantum Computing Algorithms and ArchitectureQuantum Information and CryptographyNeural Networks and Reservoir Computing
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