Accelerating Quantum Eigensolver Algorithms With Machine Learning
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @Misc{bensoussan2024acceleratingquantumeigensolveralgorithms,
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author = "Avner Bensoussan and Elena Chachkarova and
Karine Even-Mendoza and Sophie Fortz and Connor Lenihan",
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title = "Accelerating Quantum Eigensolver Algorithms With
Machine Learning",
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howpublished = "arXiv:2409.13587 v1",
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year = "2024",
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month = "20 " # sep,
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keywords = "genetic algorithms, genetic programming, genetic
improvement, quant-ph",
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URL = "https://arxiv.org/abs/2409.13587",
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size = "19 pages",
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abstract = "we explore accelerating Hamiltonian ground state
energy calculation on NISQ devices. We suggest using
search-based methods together with machine learning to
accelerate quantum algorithms, exemplified in the
Quantum Eigensolver use case. We trained two small
models on classically mined data from systems with up
to 16 qubits, using XGBoost Python regressor. We
evaluated our preliminary approach on 20-, 24- and
28-qubit systems by optimising the Eigensolver
hyperparameters. These models predict hyperparameter
values, leading to a 0.13-0.15 percent reduction in
error when tested on 28-qubit systems. However, due to
inconclusive results with 20- and 24-qubit systems, we
suggest further examination of the training data based
on Hamiltonian characteristics. In future work, we plan
to train machine learning models to optimise other
aspects or subroutines of quantum algorithm execution
beyond its hyperparameters.",
- }
Genetic Programming entries for
Avner Bensoussan
Elena Chachkarova
Karine Even-Mendoza
Sophie Fortz
Connor Lenihan
Citations