A Neural Network Approach for Stochastic Optimal Control
Xingjian Li, Deepanshu Verma, Lars Ruthotto

TL;DR
This paper introduces a neural network method for high-dimensional stochastic control problems that estimates value functions and identifies relevant state spaces without requiring known solutions, leveraging control theory insights.
Contribution
The paper presents a novel neural network approach that combines stochastic PMP, HJB equations, and the method of characteristics for efficient high-dimensional stochastic control.
Findings
Successfully estimates value functions in high dimensions
Effectively identifies relevant state space regions
Outperforms traditional methods in accuracy and speed
Abstract
We present a neural network approach for approximating the value function of high-dimensional stochastic control problems. Our training process simultaneously updates our value function estimate and identifies the part of the state space likely to be visited by optimal trajectories. Our approach leverages insights from optimal control theory and the fundamental relation between semi-linear parabolic partial differential equations and forward-backward stochastic differential equations. To focus the sampling on relevant states during neural network training, we use the stochastic Pontryagin maximum principle (PMP) to obtain the optimal controls for the current value function estimate. By design, our approach coincides with the method of characteristics for the non-viscous Hamilton-Jacobi-Bellman equation arising in deterministic control problems. Our training loss consists of a weighted…
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Taxonomy
TopicsModel Reduction and Neural Networks · Stochastic processes and financial applications · Energy Load and Power Forecasting
