Temporal Difference Learning with Continuous Time and State in the Stochastic Setting
Machine Learning
2023-06-08 v3 Artificial Intelligence
Analysis of PDEs
Optimization and Control
Abstract
We consider the problem of continuous-time policy evaluation. This consists in learning through observations the value function associated with an uncontrolled continuous-time stochastic dynamic and a reward function. We propose two original variants of the well-known TD(0) method using vanishing time steps. One is model-free and the other is model-based. For both methods, we prove theoretical convergence rates that we subsequently verify through numerical simulations. Alternatively, those methods can be interpreted as novel reinforcement learning approaches for approximating solutions of linear PDEs (partial differential equations) or linear BSDEs (backward stochastic differential equations).
Cite
@article{arxiv.2202.07960,
title = {Temporal Difference Learning with Continuous Time and State in the Stochastic Setting},
author = {Ziad Kobeissi and Francis Bach},
journal= {arXiv preprint arXiv:2202.07960},
year = {2023}
}