Introduction to Solving Quant Finance Problems with Time-Stepped FBSDE and Deep Learning

B. Hientzsch
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引用次数: 6

Abstract

In this introductory paper, we discuss how quantitative finance problems under some common risk factor dynamics for some common instruments and approaches can be formulated as time-continuous or time-discrete forward-backward stochastic differential equations (FBSDE) final-value or control problems, how these final value problems can be turned into control problems, how time-continuous problems can be turned into time-discrete problems, and how the forward and backward stochastic differential equations (SDE) can be time-stepped. We obtain both forward and backward time-stepped time-discrete stochastic control problems (where forward and backward indicate in which direction the $Y$ SDE is time-stepped) that we will solve with optimization approaches using deep neural networks for the controls and stochastic gradient and other deep learning methods for the actual optimization/learning. We close with examples for the forward and backward methods for an European option pricing problem. Several methods and approaches are new.
介绍用时间步FBSDE和深度学习解决量化金融问题
在这篇介绍性论文中,我们讨论了在一些常见的风险因素动力学下,一些常见工具和方法的定量金融问题如何可以表述为时间连续或时间离散的前向倒向随机微分方程(FBSDE)最终值或控制问题,这些最终值问题如何转化为控制问题,如何将时间连续问题转化为时间离散问题。以及如何对正反向随机微分方程(SDE)进行时间步进。我们得到了前向和后向时间阶跃时间离散随机控制问题(其中前向和后向表示$Y$ SDE是时间阶跃的方向),我们将使用优化方法解决这些问题,使用深度神经网络进行控制,随机梯度和其他深度学习方法进行实际优化/学习。最后给出了欧式期权定价问题的前向和后向方法的例子。有几种方法和途径是新的。
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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