arXiv Analytics

Sign in

arXiv:2409.13909 [quant-ph]AbstractReferencesReviewsResources

Quantum Monte Carlo for Economics: Stress Testing and Macroeconomic Deep Learning

Vladimir Skavysh, Sofia Priazhkina, Diego Guala, Thomas R. Bromley

Published 2024-09-20Version 1

Computational methods both open the frontiers of economic analysis and serve as a bottleneck in what can be achieved. We are the first to study whether Quantum Monte Carlo (QMC) algorithm can improve the runtime of economic applications and challenges in doing so. We provide a detailed introduction to quantum computing and especially the QMC algorithm. Then, we illustrate how to formulate and encode into quantum circuits (a) a bank stress testing model with credit shocks and fire sales, (b) a neoclassical investment model solved with deep learning, and (c) a realistic macro model solved with deep neural networks. We discuss potential computational gains of QMC versus classical computing systems and present a few innovations in benchmarking QMC.

Comments: 54 pages (70 with appendix), 15 figures (19 with appendix)
Journal: Journal of Economic Dynamics and Control, 153, 104680 (2023)
Categories: quant-ph
Related articles: Most relevant | Search more
arXiv:2411.11660 [quant-ph] (Published 2024-11-18)
Encoding of Probability Distributions for Quantum Monte Carlo Using Tensor Networks
arXiv:2309.02735 [quant-ph] (Published 2023-09-06)
Fast Simulated Annealing inspired by Quantum Monte Carlo
arXiv:1811.12630 [quant-ph] (Published 2018-11-30)
Quantum topology identification with deep neural networks and quantum walks