This paper proposes a new method based on neural networks for computing the high-dimensional committor functions that satisfy Fokker-Planck equations. Instead of working with partial differential equations, the new method works with an integral formulation based on the semigroup of the differential operator. The variational form of the new formulation is then solved by parameterizing the committor function as a neural network. There are two major benefits of this new approach. First, stochastic gradient descent type algorithms can be applied in the training of the committor function without the need of computing any mixed second-order derivatives. Moreover, unlike the previous methods that enforce the boundary conditions through penalty terms, the new method takes into account the boundary conditions automatically. Numerical results are provided to demonstrate the performance of the proposed method.
翻译:本文件提出了基于神经网络的新方法,用于计算满足Fokker-Planck等式的高维承诺函数。新方法不是采用部分差异方程式,而是采用以差异操作员的分小组为基础的整体配方。然后,新配方的变式形式通过将承诺方函数作为神经网络的参数化来解决。这一新方法有两大好处。首先,在培训承诺方函数时,可以应用随机梯度梯度梯度下行算法,而不必计算任何混合的二阶衍生物。此外,与以前通过惩罚条款强制执行边界条件的方法不同,新方法自动考虑到边界条件。提供了数字结果,以证明拟议方法的性能。