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Quantum Encoding and Analysis on Continuous Time Stochastic Process with Financial Applications

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  • Xi-Ning Zhuang
  • Zhao-Yun Chen
  • Cheng Xue
  • Yu-Chun Wu
  • Guo-Ping Guo

Abstract

The continuous time stochastic process is a mainstream mathematical instrument modeling the random world with a wide range of applications involving finance, statistics, physics, and time series analysis, while the simulation and analysis of the continuous time stochastic process is a challenging problem for classical computers. In this work, a general framework is established to prepare the path of a continuous time stochastic process in a quantum computer efficiently. The storage and computation resource is exponentially reduced on the key parameter of holding time, as the qubit number and the circuit depth are both optimized via our compressed state preparation method. The desired information, including the path-dependent and history-sensitive information that is essential for financial problems, can be extracted efficiently from the compressed sampling path, and admits a further quadratic speed-up. Moreover, this extraction method is more sensitive to those discontinuous jumps capturing extreme market events. Two applications of option pricing in Merton jump diffusion model and ruin probability computing in the collective risk model are given.

Suggested Citation

  • Xi-Ning Zhuang & Zhao-Yun Chen & Cheng Xue & Yu-Chun Wu & Guo-Ping Guo, 2022. "Quantum Encoding and Analysis on Continuous Time Stochastic Process with Financial Applications," Papers 2208.02364, arXiv.org, revised Sep 2023.
  • Handle: RePEc:arx:papers:2208.02364
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