Solving High-Dimensional Optimal Stopping Problems Using Optimization Based Model Order Reduction

Q3 Mathematics
Martin Redmann
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引用次数: 2

Abstract

Solving optimal stopping problems by backward induction in high dimensions is often very complex since the computation of conditional expectations is required. Typically, such computations are based on regression, a method that suffers from the curse of dimensionality. Therefore, the objective of this paper is to establish dimension reduction schemes for large-scale asset price models and to solve related optimal stopping problems (e.g., Bermudan option pricing) in the reduced setting, where regression is feasible. The proposed algorithm is based on an error measure between linear stochastic differential equations. We establish optimality conditions for this error measure with respect to the reduced system coefficients and propose a particular method that satisfies these conditions up to a small deviation. We illustrate the benefit of our approach in several numerical experiments, in which Bermudan option prices are determined.
基于优化的模型降阶方法求解高维最优停车问题
由于需要计算条件期望,用逆向归纳法求解高维的最优停车问题往往是非常复杂的。通常,这样的计算是基于回归的,这种方法受到维度的诅咒。因此,本文的目标是建立大规模资产价格模型的降维方案,并在降维设置下求解相关的最优止损问题(如百慕大期权定价),其中回归是可行的。该算法基于线性随机微分方程之间的误差测量。我们建立了关于简化系统系数的这种误差测量的最优性条件,并提出了一种满足这些条件的特定方法,直到一个小的偏差。我们在几个确定百慕大期权价格的数值实验中说明了我们方法的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Applied Mathematical Finance
Applied Mathematical Finance Economics, Econometrics and Finance-Finance
CiteScore
2.30
自引率
0.00%
发文量
6
期刊介绍: The journal encourages the confident use of applied mathematics and mathematical modelling in finance. The journal publishes papers on the following: •modelling of financial and economic primitives (interest rates, asset prices etc); •modelling market behaviour; •modelling market imperfections; •pricing of financial derivative securities; •hedging strategies; •numerical methods; •financial engineering.
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