Practical Optimization Methods: With Mathematica® Applications
The goal of this book is to present basic optimization theory and modern computational algorithms in a concise manner. The book is suitable for un­ dergraduate and graduate students in all branches of engineering, operations research, and management information systems. The book should also be use­ ful for practitioners who are interested in learning optimization and using these techniques on their own. Most available books in the field tend to be either too theoretical or present computational algorithms in a cookbook style. An approach that falls some­ where in between these two extremes is adopted in this book. Theory is presented in an informal style to make sense to most undergraduate and graduate students in engineering and business. Computational algorithms are also developed in an informal style by appealing to readers' intuition rather than mathematical rigor. The available, computationally oriented books generally present algorithms alone and expect readers to perform computations by hand or implement these algorithms by themselves. This obviously is unrealistic for a usual introductory optimization course in which a wide variety of optimization algorithms are discussed. There are some books that present programs written in traditional computer languages such as Basic, FORTRAN, or Pascal. These programs help with computations, but are of limited value in developing understanding of the algorithms because very little information about the intermediate steps v ' Preface VI
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1147795744
Practical Optimization Methods: With Mathematica® Applications
The goal of this book is to present basic optimization theory and modern computational algorithms in a concise manner. The book is suitable for un­ dergraduate and graduate students in all branches of engineering, operations research, and management information systems. The book should also be use­ ful for practitioners who are interested in learning optimization and using these techniques on their own. Most available books in the field tend to be either too theoretical or present computational algorithms in a cookbook style. An approach that falls some­ where in between these two extremes is adopted in this book. Theory is presented in an informal style to make sense to most undergraduate and graduate students in engineering and business. Computational algorithms are also developed in an informal style by appealing to readers' intuition rather than mathematical rigor. The available, computationally oriented books generally present algorithms alone and expect readers to perform computations by hand or implement these algorithms by themselves. This obviously is unrealistic for a usual introductory optimization course in which a wide variety of optimization algorithms are discussed. There are some books that present programs written in traditional computer languages such as Basic, FORTRAN, or Pascal. These programs help with computations, but are of limited value in developing understanding of the algorithms because very little information about the intermediate steps v ' Preface VI
********************
——————— is presented.
109.99 In Stock
Practical Optimization Methods: With Mathematica® Applications

Practical Optimization Methods: With Mathematica® Applications

by M. Asghar Bhatti
Practical Optimization Methods: With Mathematica® Applications

Practical Optimization Methods: With Mathematica® Applications

by M. Asghar Bhatti

Paperback(Softcover reprint of the original 1st ed. 2000)

$109.99 
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Overview

The goal of this book is to present basic optimization theory and modern computational algorithms in a concise manner. The book is suitable for un­ dergraduate and graduate students in all branches of engineering, operations research, and management information systems. The book should also be use­ ful for practitioners who are interested in learning optimization and using these techniques on their own. Most available books in the field tend to be either too theoretical or present computational algorithms in a cookbook style. An approach that falls some­ where in between these two extremes is adopted in this book. Theory is presented in an informal style to make sense to most undergraduate and graduate students in engineering and business. Computational algorithms are also developed in an informal style by appealing to readers' intuition rather than mathematical rigor. The available, computationally oriented books generally present algorithms alone and expect readers to perform computations by hand or implement these algorithms by themselves. This obviously is unrealistic for a usual introductory optimization course in which a wide variety of optimization algorithms are discussed. There are some books that present programs written in traditional computer languages such as Basic, FORTRAN, or Pascal. These programs help with computations, but are of limited value in developing understanding of the algorithms because very little information about the intermediate steps v ' Preface VI
********************
——————— is presented.

Product Details

ISBN-13: 9781461267911
Publisher: Springer New York
Publication date: 04/19/2013
Edition description: Softcover reprint of the original 1st ed. 2000
Pages: 715
Product dimensions: 6.10(w) x 9.25(h) x 0.06(d)

Table of Contents

1 Optimization Problem Formulation.- 1.1 Optimization Problem Formulation.- 1.2 The Standard Form of an Optimization Problem.- 1.3 Solution of Optimization Problems.- 1.4 Time Value of Money.- 1.5 Concluding Remarks.- 1.6 Problems.- 2 Graphical Optimization.- 2.1 Procedure for Graphical Optimization.- 2.2 GraphicalSolution function.- 2.3 Graphical Optimization Examples.- 2.4 Problems.- 3 Mathematical Preliminaries.- 3.1 Vectors and Matrices.- 3.2 Approximation Using the Taylor Series.- 3.3 Solution of Nonlinear Equations.- 3.4 Quadratic Forms.- 3.5 Convex Functions and Convex Optimization Problems.- 3.6 Problems.- 4 Optimality Conditions.- 4.1 Optimality Conditions for Unconstrained Problems.- 4.2 The Additive Property of Constraints.- 4.3 Karush-Kuhn-Tucker (KT) Conditions.- 4.4 Geometric Interpretation of KT Conditions.- 4.5 Sensitivity Analysis.- 4.6 Optimality Conditions for Convex Problems.- 4.7 Second-Order Sufficient Conditions.- 4.8 Lagrangian Duality.- 4.9 Problems.- 5 Unconstrained Problems.- 5.1 Descent direction.- 5.2 Line Search Techniques—Step Length Calculations.- 5.3 Unconstrained Minimization Techniques.- 5.4 Concluding Remarks.- 5.5 Problems.- 6 Linear Programming.- 6.1 The Standard LP Problem.- 6.2 Solving a Linear System of Equations.- 6.3 Basic Solutions of an LP Problem.- 6.4 The Simplex Method.- 6.5 Unusual Situations Arising During the Simplex Solution.- 6.6 Post-Optimality Analysis.- 6.7 The Revised Simplex Method.- 6.8 Sensitivity Analysis Using the Revised Simplex Method.- 6.9 Concluding Remarks.- 6.10 Problems.- 7 Interior Point Methods.- 7.1 Optimality Conditions for Standard LP.- 7.2 The Primal Affine Scaling Method.- 7.3 The Primal-Dual Interior Point Method.- 7.4 Concluding Remarks.- 7.5 Appendix—Null and Range Spaces.- 7.6 Problems.-8 Quadratic Programming.- 8.1 KT Conditions for Standard QP.- 8.2 The Primal Affine Scaling Method for Convex QP.- 8.3 The Primal-Dual Method for Convex QP.- 8.4 Active Set Method.- 8.5 Active Set Method for the Dual QP Problem.- 8.6 Appendix—Derivation of the Descent Direction Formula for the PAS Method.- 8.7 Problems.- 9 Constrained Nonlinear Problems.- 9.1 Normalization.- 9.2 Penalty Methods.- 9.3 Linearization of a Nonlinear Problem.- 9.4 Sequential Linear Programming—SLP.- 9.5 Basic Sequential Quadratic Programming—SQP.- 9.6 Refined SQP Methods.- 9.7 Problems.- A.1 Basic Manipulations in Mathematica.- A.2 Lists and Matrices.- A.3 Solving Equations.- A.7 Online Help.
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