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Encompassing all the major topics students will encounter in courses on the subject, the authors teach both the underlying mathematical foundations and how these ideas are implemented in practice. They illustrate all the concepts with both worked examples and plenty of exercises, and, in addition, provide software so that students can try out numerical methods and so hone their skills in interpreting the results. As a result, this will make an ideal textbook for all those coming to the subject for the first time. Authors' note: A problem recently found with the software is due to a bug in Formula One, the third party commercial software package that was used for the development of the interface. It occurs when the date, currency, etc. format is set to a non-United States version. Please try setting your computer date/currency option to the United States option . The new version of Formula One, when ready, will be posted on WWW.
Linear programming represents one of the major applications of mathematics to business, industry, and economics. It provides a methodology for optimizing an output given that is a linear function of a number of inputs. George Dantzig is widely regarded as the founder of the subject with his invention of the simplex algorithm in the 1940's. This second volume is intended to add to the theory of the items discussed in the first volume. It also includes additional advanced topics such as variants of the simplex method, interior point methods (early and current methods), GUB, decomposition, integer programming, and game theory. Graduate students in the fields of operations research, industrial engineering, and applied mathematics will find this volume of particular interest.
This textbook on Linear and Nonlinear Optimization is intended for
graduate and advanced undergraduate students in operations research
and related fields. It is both literate and mathematically strong,
yet requires no prior course in optimization. As suggested by its
title, the book is divided into two parts covering in their
individual chapters LP Models and Applications; Linear Equations
and Inequalities; The Simplex Algorithm; Simplex Algorithm
Continued; Duality and the Dual Simplex Algorithm; Postoptimality
Analyses; Computational Considerations; Nonlinear (NLP) Models and
Applications; Unconstrained Optimization; Descent Methods;
Optimality Conditions; Problems with Linear Constraints; Problems
with Nonlinear Constraints; Interior-Point Methods; and an Appendix
covering Mathematical Concepts. Each chapter ends with a set of
exercises. The book is based on lecture notes the authors have used
in numerous optimization courses the authors have taught at
Stanford University. It emphasizes modeling and numerical
algorithms for optimization with continuous (not integer)
variables. The discussion presents the underlying theory without
always focusing on formal mathematical proofs (which can be found
in cited references). Another feature of this book is its inclusion
of cultural and historical matters, most often appearing among the
footnotes. "This book is a real gem. The authors do a masterful job
of rigorously presenting all of the relevant theory clearly and
concisely while managing to avoid unnecessary tedious mathematical
details. This is an ideal book for teaching a one or two semester
masters-level course in optimization - it broadly covers linear and
nonlinear programming effectively balancing modeling, algorithmic
theory, computation, implementation, illuminating historical facts,
and numerous interesting examples and exercises. Due to the clarity
of the exposition, this book also serves as a valuable reference
for self-study." Professor Ilan Adler, IEOR Department, UC Berkeley
"A carefully crafted introduction to the main elements and
applications of mathematical optimization. This volume presents the
essential concepts of linear and nonlinear programming in an
accessible format filled with anecdotes, examples, and exercises
that bring the topic to life. The authors plumb their decades of
experience in optimization to provide an enriching layer of
historical context. Suitable for advanced undergraduates and
masters students in management science, operations research, and
related fields."Michael P. Friedlander, IBM Professor of Computer
Science, Professor of Mathematics, University of British Columbia
Encompassing all the major topics students will encounter in
courses on the subject, the authors teach both the underlying
mathematical foundations and how these ideas are implemented in
practice. They illustrate all the concepts with both worked
examples and plenty of exercises, and, in addition, provide
software so that students can try out numerical methods and so hone
their skills in interpreting the results. As a result, this will
make an ideal textbook for all those coming to the subject for the
first time. Authors' note: A problem recently found with the
software is due to a bug in Formula One, the third party commercial
software package that was used for the development of the
interface. It occurs when the date, currency, etc. format is set to
a non-United States version. Please try setting your computer
date/currency option to the United States option . The new version
of Formula One, when ready, will be posted on WWW.
George Dantzig is widely regarded as the founder of this subject
with his invention of the simplex algorithm in the 1940's. In this
second volume, the theory of the items discussed in the first
volume is expanded to include such additional advanced topics as
variants of the simplex method; interior point methods, GUB,
decomposition, integer programming, and game theory. Graduate
students in the fields of operations research, industrial
engineering and applied mathematics will thus find this volume of
particular interest.
This textbook on Linear and Nonlinear Optimization is intended for
graduate and advanced undergraduate students in operations research
and related fields. It is both literate and mathematically strong,
yet requires no prior course in optimization. As suggested by its
title, the book is divided into two parts covering in their
individual chapters LP Models and Applications; Linear Equations
and Inequalities; The Simplex Algorithm; Simplex Algorithm
Continued; Duality and the Dual Simplex Algorithm; Postoptimality
Analyses; Computational Considerations; Nonlinear (NLP) Models and
Applications; Unconstrained Optimization; Descent Methods;
Optimality Conditions; Problems with Linear Constraints; Problems
with Nonlinear Constraints; Interior-Point Methods; and an Appendix
covering Mathematical Concepts. Each chapter ends with a set of
exercises. The book is based on lecture notes the authors have used
in numerous optimization courses the authors have taught at
Stanford University. It emphasizes modeling and numerical
algorithms for optimization with continuous (not integer)
variables. The discussion presents the underlying theory without
always focusing on formal mathematical proofs (which can be found
in cited references). Another feature of this book is its inclusion
of cultural and historical matters, most often appearing among the
footnotes. "This book is a real gem. The authors do a masterful job
of rigorously presenting all of the relevant theory clearly and
concisely while managing to avoid unnecessary tedious mathematical
details. This is an ideal book for teaching a one or two semester
masters-level course in optimization - it broadly covers linear and
nonlinear programming effectively balancing modeling, algorithmic
theory, computation, implementation, illuminating historical facts,
and numerous interesting examples and exercises. Due to the clarity
of the exposition, this book also serves as a valuable reference
for self-study." Professor Ilan Adler, IEOR Department, UC Berkeley
"A carefully crafted introduction to the main elements and
applications of mathematical optimization. This volume presents the
essential concepts of linear and nonlinear programming in an
accessible format filled with anecdotes, examples, and exercises
that bring the topic to life. The authors plumb their decades of
experience in optimization to provide an enriching layer of
historical context. Suitable for advanced undergraduates and
masters students in management science, operations research, and
related fields."Michael P. Friedlander, IBM Professor of Computer
Science, Professor of Mathematics, University of British Columbia
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