We consider the nonlinear Kolmogorov equation posed in a Hilbert space $H$, not necessarily of finite dimension. This model was recently studied by Cox et al. [24] in the framework of weak convergence rates of stochastic wave models. Here, we propose a complementary approach by providing an infinite-dimensional Deep Learning method to approximate suitable solutions of this model. Based in the work by Hure, Pham and Warin [45] concerning the finite dimensional case, and our previous work [20] dealing with L\'evy based processes, we generalize an Euler scheme and consistency results for the Forward Backward Stochastic Differential Equations to the infinite dimensional Hilbert valued case. Since our framework is general, we require the recently developed DeepOnets neural networks [21, 51] to describe in detail the approximation procedure. Also, the framework developed by Fuhrman and Tessitore [35] to fully describe the stochastic approximations will be adapted to our setting
翻译:我们认为Hilbert空间中的非线性科尔莫戈洛夫方程式是Hobert $H美元,不一定是一定的维度。Cox 等人(24)最近在Stochacistic 浪流模型衰弱的趋同率框架内研究了这一模型。在这里,我们提出一种补充方法,提供无限的深度深学习方法,以估计该模型的适当解决办法。基于Hure、Pham和Warin关于有限维度案例的工作[45],以及我们以前关于L\'evy 进程的工作[20],我们将前向后托盘式差异方案和一致性结果普遍化为无限维度Hilbert估值案例。由于我们的框架是普遍的,我们要求最近开发的DeepOunts神经网络[21、51]详细描述近似程序。此外,Fuhrman和Tessitore开发的框架[35]将适用于我们的背景。