Optimization is one of the most important areas of modern
applied mathematics, with applications in fields from engineering
and economics to finance, statistics, management science, and
medicine. While many books have addressed its various aspects,
"Nonlinear Optimization" is the first comprehensive treatment that
will allow graduate students and researchers to understand its
modern ideas, principles, and methods within a reasonable time, but
without sacrificing mathematical precision. Andrzej Ruszczynski, a
leading expert in the optimization of nonlinear stochastic systems,
integrates the theory and the methods of nonlinear optimization in
a unified, clear, and mathematically rigorous fashion, with
detailed and easy-to-follow proofs illustrated by numerous examples
and figures.
The book covers convex analysis, the theory of optimality
conditions, duality theory, and numerical methods for solving
unconstrained and constrained optimization problems. It addresses
not only classical material but also modern topics such as
optimality conditions and numerical methods for problems involving
nondifferentiable functions, semidefinite programming, metric
regularity and stability theory of set-constrained systems, and
sensitivity analysis of optimization problems.
Based on a decade's worth of notes the author compiled in
successfully teaching the subject, this book will help readers to
understand the mathematical foundations of the modern theory and
methods of nonlinear optimization and to analyze new problems,
develop optimality theory for them, and choose or construct
numerical solution methods. It is a must for anyone seriously
interested in optimization.
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