Control Randomisation Approach for Policy Gradient and Application to Reinforcement Learning in Optimal Switching

IF 1.6 2区 数学 Q2 MATHEMATICS, APPLIED
Robert Denkert, Huyên Pham, Xavier Warin
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引用次数: 0

Abstract

We propose a comprehensive framework for policy gradient methods tailored to continuous time reinforcement learning. This is based on the connection between stochastic control problems and randomised problems, enabling applications across various classes of Markovian continuous time control problems, beyond diffusion models, including e.g. regular, impulse and optimal stopping/switching problems. By utilizing change of measure in the control randomisation technique, we derive a new policy gradient representation for these randomised problems, featuring parametrised intensity policies. We further develop actor-critic algorithms specifically designed to address general Markovian stochastic control issues. Our framework is demonstrated through its application to optimal switching problems, with two numerical case studies in the energy sector focusing on real options.

Abstract Image

政策梯度的控制随机化方法及其在最优切换强化学习中的应用
我们提出了一个针对连续时间强化学习的政策梯度方法综合框架。该框架基于随机控制问题和随机化问题之间的联系,可应用于扩散模型之外的各类马尔可夫连续时间控制问题,包括常规问题、脉冲问题和最优停止/切换问题。通过利用控制随机化技术中的度量变化,我们为这些随机化问题推导出了一种新的策略梯度表示法,具有参数化强度策略的特点。我们还进一步开发了专门用于解决一般马尔可夫随机控制问题的行为批判算法。通过将我们的框架应用于最优转换问题,并在能源领域进行了两个以实物期权为重点的数值案例研究,我们的框架得到了验证。
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来源期刊
CiteScore
3.30
自引率
5.60%
发文量
103
审稿时长
>12 weeks
期刊介绍: The Applied Mathematics and Optimization Journal covers a broad range of mathematical methods in particular those that bridge with optimization and have some connection with applications. Core topics include calculus of variations, partial differential equations, stochastic control, optimization of deterministic or stochastic systems in discrete or continuous time, homogenization, control theory, mean field games, dynamic games and optimal transport. Algorithmic, data analytic, machine learning and numerical methods which support the modeling and analysis of optimization problems are encouraged. Of great interest are papers which show some novel idea in either the theory or model which include some connection with potential applications in science and engineering.
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