Optimization and Learning via Stochastic Gradient Search

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A01=Bernd Heidergott
A01=Felisa Vazquez-Abad
adaptive methods
algorithm design
algorithmic development
applied mathematics
approximation algorithms
asymptotic analysis
Author_Bernd Heidergott
Author_Felisa Vazquez-Abad
bias-variance tradeoff
Category=PBT
Category=PBU
Category=PBW
Category=PBWL
computational complexity
computational mathematics
computational optimization
constrained optimization
convergence analysis
convergence theory
convex optimization
cost functions
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
finite differences
first-order methods
global optimization
gradient descent
Gradient Estimation
gradient methods
gradient-based optimization
infinitesimal perturbation analysis
inventory
iteration complexity
learning rate
local minima
loss functions
machine learning
Markov processes.
mathematical theory
measure-valued differentiation
model fitting
momentum methods
Monte Carlo simulation
non-convex optimization
non-smooth optimization
numerical algorithms
numerical methods
objective functions
Optimization
optimization algorithms
optimization landscapes
optimization methods
optimization problems
optimization theory
ordinary differential equations
parameter estimation
practical implementation
quasi-Newton methods
queuing
reinforcement learning
sample complexity
score function method
second-order methods
Simulation Optimization.
smooth optimization
smoothed perturbation analysis
statistical learning
statistical optimization
step size
stochastic approximation
stochastic gradient descent
stochastic methods
Stochastic Optimization
stochastic processes
theoretical analysis
unconstrained optimization
variance reduction
weak derivatives

Product details

  • ISBN 9780691245867
  • Dimensions: 178 x 254mm
  • Publication Date: 28 Oct 2025
  • Publisher: Princeton University Press
  • Publication City/Country: US
  • Product Form: Hardback
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An introduction to gradient-based stochastic optimization that integrates theory and implementation

This book explains gradient-based stochastic optimization, exploiting the methodologies of stochastic approximation and gradient estimation. Although the approach is theoretical, the book emphasizes developing algorithms that implement the methods. The underlying philosophy of this book is that when solving real problems, mathematical theory, the art of modeling, and numerical algorithms complement each other, with no one outlook dominating the others.

The book first covers the theory of stochastic approximation including advanced models and state-of-the-art analysis methodology, treating applications that do not require the use of gradient estimation. It then presents gradient estimation, developing a modern approach that incorporates cutting-edge numerical algorithms. Finally, the book culminates in a rich set of case studies that integrate the concepts previously discussed into fully worked models. The use of stochastic approximation in statistics and machine learning is discussed, and in-depth theoretical treatments for selected gradient estimation approaches are included.

Numerous examples show how the methods are applied concretely, and end-of-chapter exercises enable readers to consolidate their knowledge. Many chapters end with a section on “Practical Considerations” that addresses typical tradeoffs encountered in implementation. The book provides the first unified treatment of the topic, written for a wide audience that includes researchers and graduate students in applied mathematics, engineering, computer science, physics, and economics.

Felisa Vázquez-Abad is professor of computer science at City University of New York and principal investigator in the School of Computing and Information Systems at the University of Melbourne. Bernd Heidergott is professor of stochastic optimization in the Department of Operations Analytics at the School of Business and Economics and research fellow at Tinbergen Institute, Amsterdam.

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