Sigillo dell'Università di Bologna
Seminari del Dipartimento di Matematica
Università di Bologna

Reinforcement learning for exploratory optimal stopping: A singular control formulation

seminario tenuto da
Jodi Dianetti

Maggio
21
2026
probabilità
ore 11:00
presso Aula Arzelà
seminario on line • collegamento al meeting (codice: ID riunione: 363 719 926 275 962 Passcode: yP9hT6CJ)
nell'ambito della serie: STOCHASTICS AND APPLICATIONS
In this talk we discuss continuous-time and state-space optimal stopping problems from a reinforcement learning perspective. We begin by formulating the stopping problem using randomized stopping times, where the decision maker's control is represented by the probability of stopping within a given time--specifically, a bounded, non-decreasing, càdlàg control process. To encourage exploration and facilitate learning, we introduce a regularized version of the problem by penalizing it with the cumulative residual entropy of the randomized stopping time. The regularized problem takes the form of an (n+1)-dimensional degenerate singular stochastic control with finite-fuel. We address this through the dynamic programming principle, which enables us to identify the unique optimal exploratory strategy. For the specific case of a real option problem, we derive a semi-explicit solution to the regularized problem, allowing us to assess the impact of entropy regularization and analyze the vanishing entropy limit. Finally, we propose a reinforcement learning algorithm based on policy iteration. We show policy improvement results for our proposed algorithm. This talk is based on a joint project together with Giorgio Ferrari and Renyuan Xu.

organizzato da: Cristina Di Girolami
nell'ambito del Progetto R.F.O. RFO2025PASCUCCIA del prof. Andrea Pascucci
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