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Optimization for Decision Making : Linear and Quadratic Models / by Katta G. Murty
(International Series in Operations Research & Management Science. ISSN:22147934 ; 137)

1st ed. 2010.
出版者 (New York, NY : Springer US : Imprint: Springer)
出版年 2010
本文言語 英語
大きさ XXVI, 482 p. 47 illus : online resource
著者標目 *Murty, Katta G author
SpringerLink (Online service)
件 名 LCSH:Mathematical models
LCSH:Operations research
LCSH:Management science
LCSH:Mathematical optimization
LCSH:Industrial engineering
LCSH:Production engineering
FREE:Mathematical Modeling and Industrial Mathematics
FREE:Operations Research and Decision Theory
FREE:Operations Research, Management Science
FREE:Optimization
FREE:Industrial and Production Engineering
一般注記 Linear Equations, Inequalities, Linear Programming: A Brief Historical Overview -- Formulation Techniques Involving Transformations of Variables -- Intelligent Modeling Essential to Get Good Results -- Polyhedral Geometry -- Duality Theory and Optimality Conditions for LPs -- Revised Simplex Variants of the Primal and Dual Simplex Methods and Sensitivity Analysis -- Interior Point Methods for LP -- Sphere Methods for LP -- Quadratic Programming Models
Optimization for Decision Making: Linear and Quadratic Models is a first-year graduate level text that illustrates how to formulate real world problems using linear and quadratic models; how to use efficient algorithms – both old and new – for solving these models; and how to draw useful conclusions and derive useful planning information from the output of these algorithms. While almost all the best known books on LP are essentially mathematics books with only very simple modeling examples, this book emphasizes the intelligent modeling of real world problems, and the author presents several illustrative examples and includes many exercises from a variety of application areas. Additionally, where other books on LP only discuss the simplex method, and perhaps existing interior point methods, this book also discusses a new method based on using the sphere which uses matrix inversion operations sparingly and may be well suited to solving large-scale LPs, as well as those that may not have the property of being very sparse. Individual chapters present a brief history of mathematical modeling; methods for formulating real world problems; three case studies that illustrate the need for intelligent modeling; classical theory of polyhedral geometry that plays an important part in the study of LP; duality theory, optimality conditions for LP, and marginal analysis; variants of the revised simplex method; interior point methods; sphere methods; and extensions of sphere method to convex and nonconvex quadratic programs and to 0-1 integer programs through quadratic formulations. End of chapter exercises are provided throughout, with additional exercises available online
HTTP:URL=https://doi.org/10.1007/978-1-4419-1291-6
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Springer eBooks 9781441912916
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データ種別 電子ブック
分 類 LCC:TA342-343
DC23:003.3
書誌ID 4000119360
ISBN 9781441912916

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