论文标题
用于求解完全非线性PDE的差异学习方法
Differential learning methods for solving fully nonlinear PDEs
论文作者
论文摘要
我们提出了用于用凸汉密尔顿式求解完全非线性偏微分方程(PDE)的机器学习方法。我们的算法分为两个步骤。首先,PDE以其双随机控制表示形式重写,并使用神经网络估算相应的最佳反馈控制。接下来,提出了三种不同的方法,以近似关联的值函数,即初始PDE的解在整个感兴趣的时空域上。所提出的深度学习算法依赖于从回归或Martingale代表的路径版本及其差异关系中获得的各种损失函数,并同时计算解决方案及其衍生物。与现有方法相比,添加与梯度相关的差异损耗函数,以及具有远期过程的Malliavin衍生物的增强训练集,可以更好地估计PDE溶液衍生物,尤其是第二个衍生物的溶液衍生物,通常很难近似。此外,我们利用我们的方法设计算法,以解决终端条件的变化(例如,在数学金融的背景下的期权收益)通过旨在近似功能运营商近似功能运算符的deponet神经网络的类别。数值测试说明了我们方法在分辨出与具有线性市场影响和默顿投资组合选择问题的选项定价相关的完全非线性PDE方面的准确性。
We propose machine learning methods for solving fully nonlinear partial differential equations (PDEs) with convex Hamiltonian. Our algorithms are conducted in two steps. First the PDE is rewritten in its dual stochastic control representation form, and the corresponding optimal feedback control is estimated using a neural network. Next, three different methods are presented to approximate the associated value function, i.e., the solution of the initial PDE, on the entire space-time domain of interest. The proposed deep learning algorithms rely on various loss functions obtained either from regression or pathwise versions of the martingale representation and its differential relation, and compute simultaneously the solution and its derivatives. Compared to existing methods, the addition of a differential loss function associated to the gradient, and augmented training sets with Malliavin derivatives of the forward process, yields a better estimation of the PDE's solution derivatives, in particular of the second derivative, which is usually difficult to approximate. Furthermore, we leverage our methods to design algorithms for solving families of PDEs when varying terminal condition (e.g. option payoff in the context of mathematical finance) by means of the class of DeepOnet neural networks aiming to approximate functional operators. Numerical tests illustrate the accuracy of our methods on the resolution of a fully nonlinear PDE associated to the pricing of options with linear market impact, and on the Merton portfolio selection problem.