Market informed portfolio optimization methods with hybrid quantum computing

This document presents a portfolio optimization framework that employs a hybrid quantum computing algorithm and a futures market sentiment indicator—The Market Sentiment Meter (MSM) variable, developed jointly by CME Group and 1QBit. The methodology used was the Variational Quantum Eigensolver (VQE)...

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Veröffentlicht in:Review of financial economics 2025-01, Vol.43 (1), p.62-77
Hauptverfasser: Salirrosas, Giancarlo Martínez, Gao, Jinglun, Yu, Arthur, Verma, Anish Ravi
Format: Artikel
Sprache:eng
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Zusammenfassung:This document presents a portfolio optimization framework that employs a hybrid quantum computing algorithm and a futures market sentiment indicator—The Market Sentiment Meter (MSM) variable, developed jointly by CME Group and 1QBit. The methodology used was the Variational Quantum Eigensolver (VQE). The work presented here is divided into four portfolio optimization problem formulations, of binary and continuous variable formulations, determining which assets to pick their weights. This work demonstrates that adding the MSM variable can improve the performance of hybrid quantum solutions, by informing the asset selection problem with market environment information through the four MSM states.
ISSN:1058-3300
1873-5924
DOI:10.1002/rfe.1219