In this paper we consider the numerical approximation of nonlocal integro differential parabolic equations via neural networks. These equations appear in many recent applications, including finance, biology and others, and have been recently studied in great generality starting from the work of Caffarelli and Silvestre. Based in the work by Hure, Pham and Warin, we generalize their Euler scheme and consistency result for Backward Forward Stochastic Differential Equations to the nonlocal case. We rely on L\`evy processes and a new neural network approximation of the nonlocal part to overcome the lack of a suitable good approximation of the nonlocal part of the solution.
翻译:在本文中,我们考虑的是通过神经网络的非本地原基因差异抛物线方程式的数值近似值。这些方程式出现在包括金融、生物学和其他在内的许多近期应用中,最近从Caffarelli和Silvestre的工作开始就非常笼统地进行了研究。根据Hure、Pham和Warin的工作,我们把它们的Euler法和向后进的斯托克差异方程式的一致性结果推广到非本地的案例中。我们依靠L ⁇ evy过程和新的非本地部分神经网络近似,以克服解决方案中非本地部分缺乏合适的良好近似。