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L2O-gdagger: Learning to Optimize Parameterized Quantum Circuits with Fubini-Study Metric Tensor
arXiv
Authors: Yu-Chao Huang, Hsi-Sheng Goan
Year
2024
Paper ID
65157
Status
Preprint
Abstract Read
~2 min
Abstract Words
194
Citations
N/A
Abstract
Before the advent of fault-tolerant quantum computers, variational quantum algorithms (VQAs) play a crucial role in noisy intermediate-scale quantum (NISQ) machines. Conventionally, the optimization of VQAs predominantly relies on manually designed optimizers. However, learning to optimize (L2O) demonstrates impressive performance by training small neural networks to replace handcrafted optimizers. In our work, we propose L2O-gdagger, a textit{quantum-aware} learned optimizer that leverages the Fubini-Study metric tensor $gdagger$ and long short-term memory networks. We theoretically derive the update equation inspired by the lookahead optimizer and incorporate the quantum geometry of the optimization landscape in the learned optimizer to balance fast convergence and generalization. Empirically, we conduct comprehensive experiments across a range of VQA problems. Our results demonstrate that L2O-gdagger not only outperforms the current SOTA hand-designed optimizer without any hyperparameter tuning but also shows strong out-of-distribution generalization compared to previous L2O optimizers. We achieve this by training L2O-gdagger on just a single generic PQC instance. Our novel textit{quantum-aware} learned optimizer, L2O-gdagger, presents an advancement in addressing the challenges of VQAs, making it a valuable tool in the NISQ era.
Why This Paper Matters
- This paper contributes to the Quantum Machine Learning research area in the Quantum Articles archive.
- It adds a 2024 reference point for readers tracking recent quantum research.
- Before the advent of fault-tolerant quantum computers, variational quantum algorithms (VQAs) play a crucial role in noisy intermediate-scale quantum (NISQ) machines.
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