This paper introduces a new approximation scheme for solving high-dimensional semilinear partial differential equations (PDEs) and backward stochastic differential equations (BSDEs). First, we decompose a target semilinear PDE (BSDE) into two parts, namely "dominant" linear and "small" nonlinear PDEs. Then, we employ a Deep BSDE solver with a new control variate method to solve those PDEs, where approximations based on an asymptotic expansion technique are effectively applied to the linear part and also used as control variates for the nonlinear part. Moreover, our theoretical result indicates that errors of the proposed method become much smaller than those of the original Deep BSDE solver. Finally, we show numerical experiments to demonstrate the validity of our method, which is consistent with the theoretical result in this paper.
翻译:本文介绍了解决高维半线性局部方程式(PDEs)和后向随机差分方程式(BSDEs)的新的近似方案。 首先,我们将目标半线性PDE(BSDE)分解成两个部分,即“主导”线性和“小型”非线性PDEs。然后,我们使用一个深BSDE解答器,采用新的控制变量变量方法来解决这些PDEs,其中基于无药可治扩展技术的近似被有效应用于线性部分,并用作非线性部分的控制变量。此外,我们的理论结果表明,拟议方法的错误比原始深BSDE解算器的错误要小得多。 最后,我们展示了数字实验,以证明我们的方法的有效性,这与本文的理论结果是一致的。