Bültmann & Gerriets
Computational Stochastic Programming
Models, Algorithms, and Implementation
von Lewis Ntaimo
Verlag: Springer International Publishing
Reihe: Springer Optimization and Its Applications Nr. 774
Gebundene Ausgabe
ISBN: 978-3-031-52462-2
Auflage: 2024
Erschienen am 05.04.2024
Sprache: Englisch
Format: 241 mm [H] x 160 mm [B] x 34 mm [T]
Gewicht: 951 Gramm
Umfang: 528 Seiten

Preis: 149,79 €
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Klappentext
Inhaltsverzeichnis

This book provides a foundation in stochastic, linear, and mixed-integer programming algorithms with a focus on practical computer algorithm implementation. The purpose of this book is to provide a foundational and thorough treatment of the subject with a focus on models and algorithms and their computer implementation. The book¿s most important features include a focus on both risk-neutral and risk-averse models, a variety of real-life example applications of stochastic programming, decomposition algorithms, detailed illustrative numerical examples of the models and algorithms, and an emphasis on computational experimentation. With a focus on both theory and implementation of the models and algorithms for solving practical optimization problems, this monograph is suitable for readers with fundamental knowledge of linear programming, elementary analysis, probability and statistics, and some computer programming background. Several examples of stochastic programming applications areincluded, providing numerical examples to illustrate the models and algorithms for both stochastic linear and mixed-integer programming, and showing the reader how to implement the models and algorithms using computer software.



1. Introduction.- 2 Stochastic Programming Models.- 3 Modeling and Illustrative Numerical Examples.- 4 Example Applications of Stochastic Programming.- 5 Deterministic Large-Scale Decomposition Methods.- 6 Risk-Neutral Stochastic Linear Programming Methods.- 7 Mean-Risk Stochastic Linear Programming Methods.-  8 Sampling-Based Stochastic Linear Programming Methods.- 9 Stochastic Mixed-Integer Programming Methods.- 10 Computational Experimentation.

 


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