Machine learning and control theory

Alain Bensoussan, Yiqun Li, Dinh Phan Cao Nguyen, Minh-Binh Tran, Sheung Chi Phillip Yam, Xiang Zhou*

*Corresponding author for this work

Research output: Chapters, Conference Papers, Creative and Literary WorksRGC 12 - Chapter in an edited book (Author)peer-review

11 Citations (Scopus)

Abstract

We survey in this chapter the connections between Machine Learning and Control Theory. Control Theory provide useful concepts and tools for Machine Learning. Conversely Machine Learning can be used to solve large control problems. In the first part of the paper, we develop the connections between reinforcement learning and Markov Decision Processes, which are discrete time control problems. In the second part, we review the concept of supervised learning and the relation with static optimization. Deep learning which extends supervised learning, can be viewed as a control problem. In the third part, we present the links between stochastic gradient descent and mean field theory. Conversely, in the fourth and fifth parts, we review machine learning approaches to stochastic control problems, and focus on the deterministic case, to explain, more easily, the numerical algorithms.
Original languageEnglish
Title of host publicationHandbook of Numerical Analysis
EditorsEmmanuel Trélat, Enrique Zuazua
PublisherElsevier B.V.
Chapter16
Pages531-558
Volume23
DOIs
Publication statusPublished - 2022

Publication series

Name
ISSN (Print)1570-8659

Funding

Alain Bensoussan acknowledges the financial support from the National Science Foundation under grants DMS-1612880, DMS-1905449, and the Research Grant Council of Hong Kong Special Administrative Region under grant GRF 11303316. Minh-Binh Tran is partially supported by NSF Grant DMS-1854453, SMU URC Grant 2020, SMU DCII Research Cluster Grant, Dedman College Linking Fellowship, Alexander von Humboldt Fellowship. Dinh Phan Cao Nguyen and Minh-Binh Tran would like to thank Prof. T. Hagstrom and Prof. A. Aceves for the computational resources. Phillip Yam acknowledges the financial supports from HKGRF-14300717 with the project title “New kinds of Forward-backward Stochastic Systems with Applications”, HKGRF-14300319 with the project title “Shape-constrained Inference: Testing for Monotonicity”, and Direct Grant for Research 2014/15 (Project No. 4053141) offered by CUHK. Xiang Zhou acknowledges the support of Hong Kong RGC GRF grants 11337216 and 11305318.

Research Keywords

  • Control theory
  • Deep learning
  • Machine learning

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