Online data assimilation in distributionally robust optimization
Abstract
This paper considers a class of real-time decision making problems to minimize the expected value of a function that depends on a random variable under an unknown distribution . In this process, samples of are collected sequentially in real time, and the decisions are made, using the real-time data, to guarantee out-of-sample performance. We approach this problem in a distributionally robust optimization framework and propose a novel Online Data Assimilation Algorithm for this purpose. This algorithm guarantees the out-of-sample performance in high probability, and gradually improves the quality of the data-driven decisions by incorporating the streaming data. We show that the Online Data Assimilation Algorithm guarantees convergence under the streaming data, and a criteria for termination of the algorithm after certain number of data has been collected.
Keywords
Cite
@article{arxiv.1803.07984,
title = {Online data assimilation in distributionally robust optimization},
author = {Dan Li and Sonia Martinez},
journal= {arXiv preprint arXiv:1803.07984},
year = {2020}
}
Comments
Appeared in CDC 2018