利用张量网络在量子计算机上生成用于期权定价的时间序列

Nozomu Kobayashi, Yoshiyuki Suimon, Koichi Miyamoto
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引用次数: 0

摘要

金融,尤其是期权定价,是一个大有可为的工业领域,可能会从量子计算中受益。虽然已经提出了期权定价的量子算法,但人们希望能更有效地实现算法中的高成本运算,其中之一就是准备一个量子态来编码标的资产价格的概率分布。特别是,在对路径依赖期权进行定价时,我们需要生成一个状态来编码标的资产价格在多个时间点的联合分布,这对算法的要求更高。为了解决这些问题,我们提出了一种使用矩阵乘积状态(MPS)作为时间序列生成模型的新方法。为了验证我们的方法,我们以 Heston 模型为目标,进行了数值实验来生成模型中的时间序列。我们的研究结果证明了 MPS 模型生成海斯顿模型路径的能力,突出了它在量子计算机上进行路径依赖期权定价的潜力。
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Time series generation for option pricing on quantum computers using tensor network
Finance, especially option pricing, is a promising industrial field that might benefit from quantum computing. While quantum algorithms for option pricing have been proposed, it is desired to devise more efficient implementations of costly operations in the algorithms, one of which is preparing a quantum state that encodes a probability distribution of the underlying asset price. In particular, in pricing a path-dependent option, we need to generate a state encoding a joint distribution of the underlying asset price at multiple time points, which is more demanding. To address these issues, we propose a novel approach using Matrix Product State (MPS) as a generative model for time series generation. To validate our approach, taking the Heston model as a target, we conduct numerical experiments to generate time series in the model. Our findings demonstrate the capability of the MPS model to generate paths in the Heston model, highlighting its potential for path-dependent option pricing on quantum computers.
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