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Classical and modern optimization

By: Carlier, Guillaume.
Series: Advanced textbooks in mathematics.Publisher: New Jersey : World Scientific, 2022Description: xiii, 371 p.; ill., 23 cm.ISBN: 9781944660529.Subject(s): Mathematical optimization | Functional Analysis | Banach space | Baire's theorem | Dunford-Pettis theorem | Envelope t5heorem | Fenchel-Rockafellar theorem | Green formula | Hopf-Lax formula | Inverse function theorem | Krein-Milman theorem | Lax-Oleinik formula | Minkowski Farkes theorem | Newton's law | Rademacher's theorem | Strong linear programming (LP) duality theoremDDC classification: 519.6 Summary: The quest for the optimal is ubiquitous in nature and human behavior. The field of mathematical optimization has a long history and remains active today, particularly in the development of machine learning. Classical and Modern Optimization presents a self-contained overview of classical and modern ideas and methods in approaching optimization problems. The approach is rich and flexible enough to address smooth and non-smooth, convex and non-convex, finite or infinite-dimensional, static or dynamic situations. The first chapters of the book are devoted to the classical toolbox: topology and functional analysis, differential calculus, convex analysis and necessary conditions for differentiable constrained optimization. The remaining chapters are dedicated to more specialized topics and applications. Valuable to a wide audience, including students in mathematics, engineers, data scientists or economists, Classical and Modern Optimization contains more than 200 exercises to assist with self-study or for anyone teaching a third- or fourth-year optimization class.
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Books 519.6 CAR (Browse shelf) Available 033707

Includes bibliographical references and index.

The quest for the optimal is ubiquitous in nature and human behavior. The field of mathematical optimization has a long history and remains active today, particularly in the development of machine learning. Classical and Modern Optimization presents a self-contained overview of classical and modern ideas and methods in approaching optimization problems. The approach is rich and flexible enough to address smooth and non-smooth, convex and non-convex, finite or infinite-dimensional, static or dynamic situations. The first chapters of the book are devoted to the classical toolbox: topology and functional analysis, differential calculus, convex analysis and necessary conditions for differentiable constrained optimization. The remaining chapters are dedicated to more specialized topics and applications. Valuable to a wide audience, including students in mathematics, engineers, data scientists or economists, Classical and Modern Optimization contains more than 200 exercises to assist with self-study or for anyone teaching a third- or fourth-year optimization class.

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