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Reinforcement Learning for Jump-Diffusions

Authors :
Gao, Xuefeng
Li, Lingfei
Zhou, Xun Yu
Gao, Xuefeng
Li, Lingfei
Zhou, Xun Yu
Publication Year :
2024

Abstract

We study continuous-time reinforcement learning (RL) for stochastic control in which system dynamics are governed by jump-diffusion processes. We formulate an entropy-regularized exploratory control problem with stochastic policies to capture the exploration--exploitation balance essential for RL. Unlike the pure diffusion case initially studied by Wang et al. (2020), the derivation of the exploratory dynamics under jump-diffusions calls for a careful formulation of the jump part. Through a theoretical analysis, we find that one can simply use the same policy evaluation and q-learning algorithms in Jia and Zhou (2022a, 2023), originally developed for controlled diffusions, without needing to check a priori whether the underlying data come from a pure diffusion or a jump-diffusion. However, we show that the presence of jumps ought to affect parameterizations of actors and critics in general. Finally, we investigate as an application the mean-variance portfolio selection problem with stock price modelled as a jump-diffusion, and show that both RL algorithms and parameterizations are invariant with respect to jumps.

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1438559945
Document Type :
Electronic Resource