Introduction to Online Control

Prijzen vanaf
56,99

Uitgelicht

VERGELIJK ALLE AANBIEDERS (3)

Beschrijving

Bol This tutorial guide introduces online nonstochastic control, an emerging paradigm in control of dynamical systems and differentiable reinforcement learning that applies techniques from online convex optimization and convex relaxations to obtain new methods with provable guarantees for classical settings in optimal and robust control. 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 control, both cost functions and perturbations from the assumed dynamical model are chosen by an adversary. Thus, the optimal policy is not defined a priori and the goal is to attain low regret against the best policy in hindsight from a benchmark class of policies. The resulting methods are based on iterative mathematical optimization algorithms and are accompanied by finite-time regret and computational complexity guarantees. This book is ideal for graduate students and researchers interested in bridging classical control theory and modern machine learning.

Vergelijk aanbieders (3)

Shop
Prijs
Verzendkosten
Totale prijs
56,99
Gratis
56,99
Naar shop
Gratis Shipping Costs
58,68
Gratis
58,68
Naar shop
Gratis Shipping Costs
58,68
Gratis
58,68
Naar shop
Gratis Shipping Costs
Beschrijving (2)
Bol

This tutorial guide introduces online nonstochastic control, an emerging paradigm in control of dynamical systems and differentiable reinforcement learning that applies techniques from online convex optimization and convex relaxations to obtain new methods with provable guarantees for classical settings in optimal and robust control. 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 control, both cost functions and perturbations from the assumed dynamical model are chosen by an adversary. Thus, the optimal policy is not defined a priori and the goal is to attain low regret against the best policy in hindsight from a benchmark class of policies. The resulting methods are based on iterative mathematical optimization algorithms and are accompanied by finite-time regret and computational complexity guarantees. This book is ideal for graduate students and researchers interested in bridging classical control theory and modern machine learning.

Amazon

Pagina's: 174, Hardcover, Cambridge University Press


Productspecificaties

Merk Cambridge University Press
EAN
  • 9781009499668
Maat

Prijzen voor het laatst bijgewerkt op:

Uitgelichte Keuze
56,99
Naar shop