Fr. 106.00

Large-Scale Convex Optimization - Algorithms & Analyses Via Monotone Operators

English · Hardback

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Starting from where a first course in convex optimization leaves off, this text presents a unified analysis of first-order optimization methods - including parallel-distributed algorithms - through the abstraction of monotone operators. With the increased computational power and availability of big data over the past decade, applied disciplines have demanded that larger and larger optimization problems be solved. This text covers the first-order convex optimization methods that are uniquely effective at solving these large-scale optimization problems. Readers will have the opportunity to construct and analyze many well-known classical and modern algorithms using monotone operators, and walk away with a solid understanding of the diverse optimization algorithms. Graduate students and researchers in mathematical optimization, operations research, electrical engineering, statistics, and computer science will appreciate this concise introduction to the theory of convex optimization algorithms.

Product details

Authors Ernest K Ryu, Ernest K. Ryu, Ernest K. (Seoul National University) Ryu, Ernest K. (Seoul National University) Yin Ryu, Wotao Yin, Wotao (University of California Yin, Yin Wotao
Publisher Cambridge University Press Academic
 
Languages English
Product format Hardback
Released 31.10.2022
 
EAN 9781009160858
ISBN 978-1-0-0916085-8
No. of pages 400
Dimensions 190 mm x 260 mm x 20 mm
Series Print on demand
Subjects Natural sciences, medicine, IT, technology > Mathematics > General, dictionaries

MATHEMATICS / General, geometry

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