@book{db7727cda0b44d4e81a0d4448a9f3c1f,
title = "First-order methods in optimization",
abstract = "The primary goal of this book is to provide a self-contained, comprehensive study of the main first-order methods that are frequently used in solving large-scale problems. First-order methods exploit information on values and gradients/subgradients (but not Hessians) of the functions composing the model under consideration. With the increase in the number of applications that can be modeled as large or even huge-scale optimization problems, there has been a revived interest in using simple methods that require low iteration cost as well as low memory storage. The author has gathered, reorganized, and synthesized (in a unified manner) many results that are currently scattered throughout the literature, many of which cannot be typically found in optimization books. First-Order Methods in Optimization offers comprehensive study of first-order methods with the theoretical foundations; provides plentiful examples and illustrations; emphasizes rates of convergence and complexity analysis of the main first-order methods used to solve large-scale problems; and covers both variables and functional decomposition methods",
keywords = "Convergence, Convex analysis, Decomposition methods, First order methods, Mathematical optimization, Nonlinear optimization, Scientific computing",
author = "Amir Beck",
note = "Includes bibliographical references and index",
year = "2017",
doi = "10.1137/1.9781611974997",
language = "الإنجليزيّة",
isbn = "9781611974980",
series = "MOS-SIAM series on optimization",
publisher = "Society for Industrial and Applied Mathematics (SIAM)",
address = "الولايات المتّحدة",
}