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Quantum Speedup of Monte Carlo Integration with respect to the Number of Dimensions and its Application to Finance

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  • Kazuya Kaneko
  • Koichi Miyamoto
  • Naoyuki Takeda
  • Kazuyoshi Yoshino

Abstract

Monte Carlo integration using quantum computers has been widely investigated, including applications to concrete problems. It is known that quantum algorithms based on quantum amplitude estimation (QAE) can compute an integral with a smaller number of iterative calls of the quantum circuit which calculates the integrand, than classical methods call the integrand subroutine. However, the issues about the iterative operations in the integrand circuit have not been discussed so much. That is, in the high-dimensional integration, many random numbers are used for calculation of the integrand and in some cases similar calculations are repeated to obtain one sample value of the integrand. In this paper, we point out that we can reduce the number of such repeated operations by a combination of the nested QAE and the use of pseudorandom numbers (PRNs), if the integrand has the separable form with respect to contributions from distinct random numbers. The use of PRNs, which the authors originally proposed in the context of the quantum algorithm for Monte Carlo, is the key factor also in this paper, since it enables parallel computation of the separable terms in the integrand. Furthermore, we pick up one use case of this method in finance, the credit portfolio risk measurement, and estimate to what extent the complexity is reduced.

Suggested Citation

  • Kazuya Kaneko & Koichi Miyamoto & Naoyuki Takeda & Kazuyoshi Yoshino, 2020. "Quantum Speedup of Monte Carlo Integration with respect to the Number of Dimensions and its Application to Finance," Papers 2011.02165, arXiv.org, revised May 2021.
  • Handle: RePEc:arx:papers:2011.02165
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    Cited by:

    1. Abha Naik & Esra Yeniaras & Gerhard Hellstern & Grishma Prasad & Sanjay Kumar Lalta Prasad Vishwakarma, 2023. "From Portfolio Optimization to Quantum Blockchain and Security: A Systematic Review of Quantum Computing in Finance," Papers 2307.01155, arXiv.org.

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