论文标题
量子计算融资:不完整市场的Martingale资产定价
Quantum computational finance: martingale asset pricing for incomplete markets
论文作者
论文摘要
衍生品是一种财务安全,其价值是基础交易资产和市场成果的函数。 Pricing a financial derivative involves setting up a market model, finding a martingale (``fair game") probability measure for the model from the given asset prices, and using that probability measure to price the derivative. When the number of underlying assets and/or the number of market outcomes in the model is large, pricing can be computationally demanding. We show that a variety of quantum techniques can be applied to the pricing problem in finance, with我们对不完整的市场的特别关注。我们讨论了三种与以前的作品不同的方法:他们不使用量子算法来进行蒙特卡洛的估计,并从类似于引导的市场变量中提取了martingale措施,这是一种量子和量子的量子,该方法是基于量化的量子。作为最后一个算法的子例程,我们将新的市场假设与市场的完整性相比,可以应用量子线性系统求解器,并将其作为原型用途的相关潜力。
A derivative is a financial security whose value is a function of underlying traded assets and market outcomes. Pricing a financial derivative involves setting up a market model, finding a martingale (``fair game") probability measure for the model from the given asset prices, and using that probability measure to price the derivative. When the number of underlying assets and/or the number of market outcomes in the model is large, pricing can be computationally demanding. We show that a variety of quantum techniques can be applied to the pricing problem in finance, with a particular focus on incomplete markets. We discuss three different methods that are distinct from previous works: they do not use the quantum algorithms for Monte Carlo estimation and they extract the martingale measure from market variables akin to bootstrapping, a common practice among financial institutions. The first two methods are based on a formulation of the pricing problem into a linear program and are using respectively the quantum zero-sum game algorithm and the quantum simplex algorithm as subroutines. For the last algorithm, we formalize a new market assumption milder than market completeness for which quantum linear systems solvers can be applied with the associated potential for large speedups. As a prototype use case, we conduct numerical experiments in the framework of the Black-Scholes-Merton model.