Quantum optimization with linear Ising penalty functions for customer data science [dataset]

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Mirkarimi, Puya;Shukla, Ishaan;Hoyle, David C.;Williams, Ross;Chancellor, Nicholas

Description

Constrained combinatorial optimization problems, which are ubiquitous in industry, can be solved by quantum algorithms such as quantum annealing (QA) and the quantum approximate optimization algorithm (QAOA). In these quantum algorithms, constraints are typically implemented with quadratic penalty functions. This penalty method can introduce large energy scales and make interaction graphs much more dense. These effects can result in worse performance of quantum optimization, particularly on near-term devices that have sparse hardware graphs and other physical limitations. In this work, we consider linear Ising penalty functions, which are applied with local fields in the Ising model, as an alternative method for implementing constraints that makes more efficient use of physical resources. We study the behaviour of the penalty method in the context of quantum optimization for customer data science problems. Our theoretical analysis and numerical simulations of QA and the QAOA indicate that this penalty method can lead to better performance in quantum optimization than the quadratic method. However, the linear Ising penalty method is not suitable for all problems as it cannot always exactly implement the desired constraint. In cases where the linear method is not successful in implementing all constraints, we propose that schemes involving both quadratic and linear Ising penalties can be effective.

Citations (1)

Mentions (0)

Metrics

Dataset Index

1.6

FAIR Score

50%

Citations

1

Mentions

0

Metrics Over Time

Publication Details

DOI

Publisher

Durham University

Assigned Domain

Subfield

Artificial Intelligence

Field

Computer Science

Domain

Physical Sciences

Confidence Score

68%

Source

Scholar Data Model

Keywords

Quantum computingquantum computingquantum annealingquantum approximate optimization algorithmcombinatorial optimization

Normalization Factors

FT

13.46

CTw

1.00

MTw

1.00