Entropy-regularized penalization schemes and reflected BSDEs with singular generators
Abstract
This paper extends our previous work to continuous-time optimal stopping, focusing on American options in an exploratory setting. Our first contribution is an entropy-regularized penalization scheme, inspired by classical penalization techniques for reflected BSDEs. It yields a smooth approximation of the stopping rule, promotes exploration, and enables gradient-based learning methods. We prove well-posedness, convergence, and illustrate numerical performance in low-dimensional examples. Our second contribution analyzes the behaviour of the scheme as the penalization parameter grows, showing that the limit solves a reflected BSDE with a logarithmically singular generator, for which we establish existence and uniqueness via a monotone limit argument.
Cite
@article{arxiv.2602.18078,
title = {Entropy-regularized penalization schemes and reflected BSDEs with singular generators},
author = {Daniel Chee and Noufel Frikha and Libo Li},
journal= {arXiv preprint arXiv:2602.18078},
year = {2026}
}