Data-Driven Estimation of Conditional Expectations, Application to Optimal Stopping and Reinforcement Learning
Machine Learning
2024-07-19 v1 Machine Learning
Abstract
When the underlying conditional density is known, conditional expectations can be computed analytically or numerically. When, however, such knowledge is not available and instead we are given a collection of training data, the goal of this work is to propose simple and purely data-driven means for estimating directly the desired conditional expectation. Because conditional expectations appear in the description of a number of stochastic optimization problems with the corresponding optimal solution satisfying a system of nonlinear equations, we extend our data-driven method to cover such cases as well. We test our methodology by applying it to Optimal Stopping and Optimal Action Policy in Reinforcement Learning.
Cite
@article{arxiv.2407.13189,
title = {Data-Driven Estimation of Conditional Expectations, Application to Optimal Stopping and Reinforcement Learning},
author = {George V. Moustakides},
journal= {arXiv preprint arXiv:2407.13189},
year = {2024}
}
Comments
20 pages, 6 figures