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Linear and nonlinear optimization

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Cover for Linear and nonlinear optimization
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Igor GrivaStephen G. NashAriela SoferFirst published 20082 editions

"This book introduces the applications, theory, and algorithms of linear and nonlinear optimization, with an emphasis on the practical aspects of the material. Its unique modular structure provides flexibility to accommodate the varying needs of instructors, students, and practitioners with different levels of sophistication in these topics. The succinct style of this second edition is punctuated with numerous real-life examples and exercises, and the authors include accessible explanations of topics that are not often mentioned in textbooks, such as duality in nonlinear optimization, primal-dual methods for nonlinear optimization, filter methods, and applications such as support vector machines. Linear and Nonlinear Optimization, Second Edition is primarily intended for use in linear and nonlinear optimization courses for advanced undergraduate and graduate students. It is also appropriate as a tutorial for researchers and practitioners who need to understand the modern algorithms of linear and nonlinear optimization to apply them to problems in science and engineering."--Jacket.

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First publish date 20083 credited authorsSearch language english

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  • Igor Griva

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    Open Author
  • Stephen G. Nash

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  • Ariela Sofer

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