Cross-Disciplinary Integration of Quantum Computing in Economics and Finance

Authors

DOI:

https://doi.org/10.62802/zar9yr94

Keywords:

Quantum computing, DSGE models, stochastic simulations, systemic risk, hybrid algorithms, university–industry collaboration, financial modeling, computational economics

Abstract

The convergence of quantum computing and economics represents a frontier in computational social science, promising to transform the modeling of uncertainty, complexity, and interdependence in financial and macroeconomic systems. This study explores how quantum computing methodologies—particularly quantum annealing, variational algorithms, and hybrid quantum–classical frameworks—can be integrated into Dynamic Stochastic General Equilibrium (DSGE) modeling, stochastic simulations, and systemic risk analytics. By focusing on collaborative university–industry partnerships, the paper examines mechanisms that accelerate translational research, facilitate scalable experimentation, and bridge theoretical quantum advances with applied financial modeling. The analysis highlights how quantum-enhanced algorithms can improve the tractability and precision of multidimensional optimization problems inherent in macroeconomic forecasting and risk estimation. It also emphasizes the institutional value of joint academic–industrial infrastructures in fostering data sharing, interdisciplinary education, and early adoption of post-classical computing in finance. The findings suggest that hybridized quantum frameworks can substantially advance decision sciences, enabling resilient and adaptive economic systems capable of responding to global shocks with greater computational foresight.

References

Andrae, S. (2025). Artificial Intelligence and Financial Stability: A Systemic Risk Approach. In Economic and Political Consequences of AI: Managing Creative Destruction (pp. 87-110). IGI Global Scientific Publishing.

Bonaparte, Y. (2025). Quantum Finance: From Qubits to Capital Markets Measuring Innovation through the Quantum Finance Index. Available at SSRN 5378395.

Cuomo, M. T., & Foroudi, P. (2025). Quantum Decision-Making Process. In Quantum Level Business Model: A New Managerial Perspective (pp. 25-42). Cham: Springer Nature Switzerland.

George, A. S. (2025). Academic and Professional Roadmap for Quantum Computing Career Development in High-Demand Technology Markets. Partners Universal International Research Journal, 4(3), 12-33.

Liu, X. (2025). Unraveling systemic risk transmission: An empirical exploration of network dynamics and market liquidity in the financial sector. Journal of the Knowledge Economy, 16(2), 6629-6664.

Makridis, C. (2025). Toward a Quantum Model of Macroeconomic Stability: Tokenized Assets, Digital Twins, and Reduced Inflation. Digital Twins, and Reduced Inflation (May 26, 2025).

Singh, A. (2025). Quantum Computing in Finance: A Strategic Roadmap for Investors and Banks. Available at SSRN 5403693.

Tera, S. P., Chinthaginjala, R., Priyadarshi, R., & Deepthi, N. (2025). Advancing AI with Quantum Computing: Theoretical Foundations and Future Challenges.

Volpe, D., Orlandi, G., & Turvani, G. (2025). Improving the solving of optimization problems: A comprehensive review of quantum approaches. Quantum Reports, 7(1), 3.

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Published

2025-11-19