Differentiable Quantum Architecture Search for Quantum Reinforcement Learning
Yize Sun, Yunpu Ma, Volker Tresp

TL;DR
This paper demonstrates that differentiable quantum architecture search (DQAS) can automatically design quantum circuits for quantum reinforcement learning tasks, outperforming manually designed circuits in environments like cart pole and frozen lake.
Contribution
It is the first work to apply gradient-based quantum architecture search to quantum reinforcement learning, showing its effectiveness and efficiency.
Findings
DQAS can automatically design quantum circuits for QRL tasks.
Automatically designed circuits outperform manual designs in tested environments.
Performance depends on the super-circuit's training success.
Abstract
Differentiable quantum architecture search (DQAS) is a gradient-based framework to design quantum circuits automatically in the NISQ era. It was motivated by such as low fidelity of quantum hardware, low flexibility of circuit architecture, high circuit design cost, barren plateau (BP) problem, and periodicity of weights. People used it to address error mitigation, unitary decomposition, and quantum approximation optimization problems based on fixed datasets. Quantum reinforcement learning (QRL) is a part of quantum machine learning and often has various data. QRL usually uses a manually designed circuit. However, the pre-defined circuit needs more flexibility for different tasks, and the circuit design based on various datasets could become intractable in the case of a large circuit. The problem of whether DQAS can be applied to quantum deep Q-learning with various datasets is still…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Quantum Information and Cryptography · Neural Networks and Reservoir Computing
MethodsQ-Learning
