Quantum Risk Analysis of Financial Derivatives
Nikitas Stamatopoulos, B. David Clader, Stefan Woerner, William J., Zeng

TL;DR
This paper introduces two quantum algorithms for calculating financial risk measures, VaR and CVaR, demonstrating potential quantum advantages in efficiency and resource requirements over classical methods.
Contribution
It presents a novel QSP-based quantum algorithm for risk analysis, showing reduced quantum resource needs and potential for broader financial applications.
Findings
QSP-based approach requires fewer quantum resources for the same accuracy.
Quantum algorithms can potentially lower the quantum hardware requirements for risk analysis.
Numerical simulations indicate quantum advantage in estimating VaR over classical methods.
Abstract
We introduce two quantum algorithms to compute the Value at Risk (VaR) and Conditional Value at Risk (CVaR) of financial derivatives using quantum computers: the first by applying existing ideas from quantum risk analysis to derivative pricing, and the second based on a novel approach using Quantum Signal Processing (QSP). Previous work in the literature has shown that quantum advantage is possible in the context of individual derivative pricing and that advantage can be leveraged in a straightforward manner in the estimation of the VaR and CVaR. The algorithms we introduce in this work aim to provide an additional advantage by encoding the derivative price over multiple market scenarios in superposition and computing the desired values by applying appropriate transformations to the quantum system. We perform complexity and error analysis of both algorithms, and show that while the two…
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Taxonomy
TopicsStochastic processes and financial applications · Financial Risk and Volatility Modeling · Financial Markets and Investment Strategies
