Springer, 2022. — 691 p. — (Springer Series in Operations Research and Financial Engineering). — ISBN 3030762742.
This richly illustrated book introduces the subject of optimization to a
broad audience with a balanced treatment of
theory, models and algorithms. Through numerous examples from
statistical learning, operations research, engineering, finance and economics, the text explains how to
formulate and justify models while accounting for real-world considerations such as
data uncertainty. It goes
beyond the classical topics of linear, nonlinear and convex programming and deals with
nonconvex and nonsmooth problems as well as games, generalized equations and stochastic optimization.
Acknowledgements.
Prelude.
Convex optimization.
Optimization under uncertainty.
Minimization problems.
Perturbation and duality.
Without convexity or smoothness.
Generalized equations.
Risk modeling and sample averages.
Games and minsup problems.
Decomposition.
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