Randomized Optimal Stopping Problem in Continuous time and Reinforcement Learning Algorithm
Yuchao Dong
Papers from arXiv.org
Abstract:
In this paper, we study the optimal stopping problem in the so-called exploratory framework, in which the agent takes actions randomly conditioning on current state and an entropy-regularized term is added to the reward functional. Such a transformation reduces the optimal stopping problem to a standard optimal control problem. We derive the related HJB equation and prove its solvability. Furthermore, we give a convergence rate of policy iteration and the comparison to classical optimal stopping problem. Based on the theoretical analysis, a reinforcement learning algorithm is designed and numerical results are demonstrated for several models.
Date: 2022-08, Revised 2023-09
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Persistent link: https://EconPapers.repec.org/RePEc:arx:papers:2208.02409
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