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Financial risk management on a neutral atom quantum processor

Lucas Leclerc, Luis Ortiz-Gutiérrez, Sebastián Grijalva, Boris Albrecht, Julia Cline, Vincent E. Elfving, Adrien Signoles, Loïc Henriet, Gianni Del Bimbo, Usman Ayub Sheikh, Maitree Shah, Luc Andrea, Faysal Ishtiaq, Andoni Duarte, Sam Mugel, Irene Cáceres, Michel Kurek, Román Orús, Achraf Seddik, Oumaima Hammami, Hacene Isselnane, Didier M'tamon

2023Physical Review Research20 citationsDOIOpen Access PDF

Abstract

Machine learning models capable of handling the large data sets collected in the financial world can often become black boxes expensive to run. The quantum computing paradigm suggests new optimization techniques that, combined with classical algorithms, may deliver competitive, faster, and more interpretable models. In this paper we propose a quantum-enhanced machine learning solution for the prediction of credit rating downgrades, also known as fallen-angels forecasting in the financial risk management field. We implement this solution on a neutral atom quantum processing unit with up to 60 qubits on a real-life data set. We report performance that is competitive with the state-of-the-art random forest benchmark, whereas our model achieves better interpretability and comparable training times. We examine how to improve performance in the near term, validating our ideas with tensor-networks-based numerical simulations.

Topics & Concepts

InterpretabilityBenchmark (surveying)Computer scienceQuantum computerTensor (intrinsic definition)QubitFinanceSet (abstract data type)QuantumArtificial intelligenceMachine learningMathematicsEconomicsPhysicsGeodesyQuantum mechanicsPure mathematicsGeographyProgramming languageQuantum Computing Algorithms and ArchitectureQuantum many-body systemsQuantum and electron transport phenomena