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Portfolio Construction using a Sampling-Based Variational Quantum Scheme

Gabriele Agliardi, Dimitris Alevras, Vaibhaw Kumar, R. Nardo, G. Compostella, Sumit Kumar, M. Proissl, Bimal Mehta·August 19, 2025·DOI: 10.1109/QAI63978.2025.00070
PhysicsComputer ScienceEconomics

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Abstract

The efficient and effective construction of portfolios that adhere to real-world constraints is a challenging optimization task in finance. We investigate a concrete representation of the problem with a focus on design proposals of an Exchange Traded Fund. We evaluate the sampling-based CVaR Variational Quantum Algorithm (VQA), combined with a local-search postprocessing, for solving problem instances that beyond a certain size become classically hard. We also propose a problem formulation that is suited for sampling-based VQA. Our utility-scale experiments on IBM Heron processors involve 109 qubits and up to 4200 gates, achieving a relative solution error of 0.49%. Results indicate that a combined quantum-classical workflow achieves better accuracy compared to purely classical local search, and that hard-to-simulate quantum circuits may lead to better convergence than simpler circuits. Our work paves the path to further explore portfolio construction with quantum computers.

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