Bagirov Numerical Nonsmooth Optimization

Numerical Nonsmooth Optimization

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Beschreibung

Solving nonsmooth optimization (NSO) problems is critical in many practical applications and real-world modeling systems. The aim of this book is to survey various numerical methods for solving NSO problems and to provide an overview of the latest developments in the field. Experts from around the world share their perspectives on specific aspects of numerical NSO. 

The book is divided into four parts, the first of which considers general methods including subgradient, bundle and gradient sampling methods. In turn, the second focuses on methods that exploit the problem’s special structure, e.g. algorithms for nonsmooth DC programming, VU decomposition techniques, and algorithms for minimax and piecewise differentiable problems. The third part considers methods for special problems like multiobjective and mixed integer NSO, and problems involving inexact data, while the last part highlights the latest advancements in derivative-free NSO. 

Given its scope, the book is ideal for students attending courses on numerical nonsmooth optimization, for lecturers who teach optimization courses, and for practitioners who apply nonsmooth optimization methods in engineering, artificial intelligence, machine learning, and business. Furthermore, it can serve as a reference text for experts dealing with nonsmooth optimization.


Solving nonsmooth optimization (NSO) problems is critical in many practical applications and real-world modeling systems. The aim of this book is to survey various numerical methods for solving NSO problems and to provide an overview of the latest developments in the field. Experts from around the world share their perspectives on specific aspects of numerical NSO. 

The book is divided into four parts, the first of which considers general methods including subgradient, bundle and gradient sampling methods. In turn, the second focuses on methods that exploit the problem’s special structure, e.g. algorithms for nonsmooth DC programming, VU decomposition techniques, and algorithms for minimax and piecewise differentiable problems. The third part considers methods for special problems like multiobjective and mixed integer NSO, and problems involving inexact data, while the last part highlights the latest advancements in derivative-free NSO.

Given its scope, the book isideal for students attending courses on numerical nonsmooth optimization, for lecturers who teach optimization courses, and for practitioners who apply nonsmooth optimization methods in engineering, artificial intelligence, machine learning, and business. Furthermore, it can serve as a reference text for experts dealing with nonsmooth optimization.

 
Provides a comprehensive coverage of both traditional and more advanced nonsmooth optimization methods Gathers for the first time the founding fathers and mothers of the respective nonsmooth optimization methods in one book The methods presented in the book are applicable in diverse fields such as data mining, machine learning, economics, computational chemistry, physics, and medicine

Autor*in

Adil M. Bagirov

Themen in »Numerical Nonsmooth Optimization«

Bundle methods Nondifferentiable optimization Nonsmooth analysis Subgradient methods Test problems Piecewise smooth Stochastic methods for NSO Inexact data Noncontinuous NSO NSO Discrete gradient based methods Penalty functions Linearization Derivative free methods

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Details

ISBN: 9783030349103
Verlag: Springer International Publishing
Erscheinung: 28.02.2020

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