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Quantum Policy Gradient Algorithm with Optimized Action Decoding

A quantum policy gradient approach with variational quantum circuits enhances quantum reinforcement learning and reduces classical overhead.

Year
2022
Venue
arXiv 2022
Authors
5
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arxiv.org/abs/2212.06663ARXIV-DEFAULT
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Abstract

Quantum machine learning implemented by variational quantum circuits (VQCs) is considered a promising concept for the noisy intermediate-scale quantum computing era. Focusing on applications in quantum reinforcement learning, we propose a specific action decoding procedure for a quantum policy gradient approach. We introduce a novel quality measure that enables us to optimize the classical post-processing required for action selection, inspired by local and global quantum measurements. The resulting algorithm demonstrates a significant performance improvement in several benchmark environments. With this technique, we successfully execute a full training routine on a 5-qubit hardware device. Our method introduces only negligible classical overhead and has the potential to improve VQC-based algorithms beyond the field of quantum reinforcement learning.

Authors

5