Variational quantum reinforcement learning via evolutionary optimization

Chen, Samuel Yen-Chi and Huang, Chih-Min and Hsing, Chia-Wei and Goan, Hsi-Sheng and Kao, Ying-Jer (2022) Variational quantum reinforcement learning via evolutionary optimization. Machine Learning: Science and Technology, 3 (1). 015025. ISSN 2632-2153

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Abstract

Recent advances in classical reinforcement learning (RL) and quantum computation point to a promising direction for performing RL on a quantum computer. However, potential applications in quantum RL are limited by the number of qubits available in modern quantum devices. Here, we present two frameworks for deep quantum RL tasks using gradient-free evolutionary optimization. First, we apply the amplitude encoding scheme to the Cart-Pole problem, where we demonstrate the quantum advantage of parameter saving using amplitude encoding. Second, we propose a hybrid framework where the quantum RL agents are equipped with a hybrid tensor network-variational quantum circuit (TN-VQC) architecture to handle inputs of dimensions exceeding the number of qubits. This allows us to perform quantum RL in the MiniGrid environment with 147-dimensional inputs. The hybrid TN-VQC architecture provides a natural way to perform efficient compression of the input dimension, enabling further quantum RL applications on noisy intermediate-scale quantum devices.

Item Type: Article
Subjects: Open Library Press > Multidisciplinary
Depositing User: Unnamed user with email support@openlibrarypress.com
Date Deposited: 07 Jul 2023 03:55
Last Modified: 07 Jul 2023 03:55
URI: https://openlibrarypress.com/id/eprint/1804

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