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Policy Gradients using Variational Quantum Circuits

Variational Quantum Circuits are being used as versatile Quantum Machine Learning models. Some empirical results exhibit an advantage in supervised and generative learning tasks. However, when applied to Reinforcement Learning, less is known. In this work, we considered a Variational Quantum Circuit composed of a low-depth hardware-efficient ansatz as the parameterized policy of a Reinforcement Learning agent.

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Andr´e Sequeira, Luis Paulo Santos, Luis Soares (2024). Dataset: Policy Gradients using Variational Quantum Circuits. https://doi.org/10.57702/ebuhalmc

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Created December 17, 2024
Last update December 17, 2024
Defined In https://doi.org/10.48550/arXiv.2203.10591
Author Andr´e Sequeira
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Luis Paulo Santos
Luis Soares