Introduction to Online Nonstochastic Control

11/17/2022
by   Elad Hazan, et al.
0

This text presents an introduction to an emerging paradigm in control of dynamical systems and differentiable reinforcement learning called online nonstochastic control. The new approach applies techniques from online convex optimization and convex relaxations to obtain new methods with provable guarantees for classical settings in optimal and robust control. The primary distinction between online nonstochastic control and other frameworks is the objective. In optimal control, robust control, and other control methodologies that assume stochastic noise, the goal is to perform comparably to an offline optimal strategy. In online nonstochastic control, both the cost functions as well as the perturbations from the assumed dynamical model are chosen by an adversary. Thus the optimal policy is not defined a priori. Rather, the target is to attain low regret against the best policy in hindsight from a benchmark class of policies. This objective suggests the use of the decision making framework of online convex optimization as an algorithmic methodology. The resulting methods are based on iterative mathematical optimization algorithms, and are accompanied by finite-time regret and computational complexity guarantees.

READ FULL TEXT
research
02/07/2020

The Power of Linear Controllers in LQR Control

The Linear Quadratic Regulator (LQR) framework considers the problem of ...
research
04/12/2018

Online convex optimization and no-regret learning: Algorithms, guarantees and applications

Spurred by the enthusiasm surrounding the "Big Data" paradigm, the mathe...
research
02/18/2021

Online Optimization and Learning in Uncertain Dynamical Environments with Performance Guarantees

We propose a new framework to solve online optimization and learning pro...
research
09/07/2019

Introduction to Online Convex Optimization

This manuscript portrays optimization as a process. In many practical ap...
research
03/05/2012

Agnostic System Identification for Model-Based Reinforcement Learning

A fundamental problem in control is to learn a model of a system from ob...
research
01/28/2022

A Regret Minimization Approach to Multi-Agent Control

We study the problem of multi-agent control of a dynamical system with k...
research
09/14/2020

Disease control as an optimization problem

Traditionally, expert epidemiologists devise policies for disease contro...

Please sign up or login with your details

Forgot password? Click here to reset