深度惩罚方法:一类解决高维最优停止问题的深度学习算法

Yunfei Peng, Pengyu Wei, Wei Wei
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引用次数: 0

摘要

我们针对高维最优停止问题提出了一种深度学习算法。我们的方法受到了求解自由边界 PDE 的惩罚法的启发。在我们的方法中,受惩罚的 PDE 使用由 \cite{weinan2017deep} 提出的深度 BSDE 框架进行逼近,因此我们创造了 "深度惩罚方法(DPM)"一词来指代我们的算法。我们证明,DPM 的误差可以由损失函数和 $O(\frac{1}\{lambda})+O(\lambda h) +O(\sqrt{h})$来约束,其中 $h$ 是时间步长,$\lambda$ 是惩罚参数。这一发现强调了在选择惩罚参数时仔细考虑的必要性,并表明离散化误差的收敛速度为 $\frac{1}{2}$。我们通过对美式期权定价领域的高维最优停止模型进行数值测试,验证了 DPM 的有效性。数值测试证实了我们提出的算法的准确性和计算效率。
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Deep Penalty Methods: A Class of Deep Learning Algorithms for Solving High Dimensional Optimal Stopping Problems
We propose a deep learning algorithm for high dimensional optimal stopping problems. Our method is inspired by the penalty method for solving free boundary PDEs. Within our approach, the penalized PDE is approximated using the Deep BSDE framework proposed by \cite{weinan2017deep}, which leads us to coin the term"Deep Penalty Method (DPM)"to refer to our algorithm. We show that the error of the DPM can be bounded by the loss function and $O(\frac{1}{\lambda})+O(\lambda h) +O(\sqrt{h})$, where $h$ is the step size in time and $\lambda$ is the penalty parameter. This finding emphasizes the need for careful consideration when selecting the penalization parameter and suggests that the discretization error converges at a rate of order $\frac{1}{2}$. We validate the efficacy of the DPM through numerical tests conducted on a high-dimensional optimal stopping model in the area of American option pricing. The numerical tests confirm both the accuracy and the computational efficiency of our proposed algorithm.
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