Classical and modern optimization
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Item type | Current library | Call number | Status | Date due | Barcode |
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SMS Library | 519.2 CAR-C (Browse shelf(Opens below)) | Available | N440 |
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519.2 ATH-M Measure & probability | 519.2 ATH-P Probability theory | 519.2 BEA-P Probability: the science of uncertainity with applications to investments, insurance, and engineering | 519.2 CAR-C Classical and modern optimization | 519.2 FEL-I Introduction to probability theory and its applications vol. II | 519.2 FEL-I Introduction to probability theory and its applications vol.I | 519.2 GUP-F Fundamentals of applied statistics |
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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