Optimization Theory Optimization Theory

Optimization Theory

A Concise Introduction

    • $29.99
    • $29.99

Publisher Description

Mathematically, most of the interesting optimization problems can be formulated to optimize some objective function, subject to some equality and/or inequality constraints. This book introduces some classical and basic results of optimization theory, including nonlinear programming with Lagrange multiplier method, the Karush–Kuhn–Tucker method, Fritz John's method, problems with convex or quasi-convex constraints, and linear programming with geometric method and simplex method.

A slim book such as this which touches on major aspects of optimization theory will be very much needed for most readers. We present nonlinear programming, convex programming, and linear programming in a self-contained manner. This book is for a one-semester course for upper level undergraduate students or first/second year graduate students. It should also be useful for researchers working on many interdisciplinary areas other than optimization.
Contents:Mathematical Preparation (including Basics of Euclidean Space, Linear Algebra, Limits, Continuity, and Differentiability of Functions)Optimization Problems and Existence of Optimal SolutionsNecessary and Sufficient Conditions of Optimal Solutions (including Problems with No Constraint, with Equality Constraints, and with Equality and Inequality Constraints)Problems with Convexity and Quasi-Convexity Conditions (including Convex Sets and Convex Functions, Optimization Problems with Convex and Quasi-Convex Constraints, Lagrange Duality)Linear Programming (including Geometric Method, Simplex Method, Sensitivity Analysis, and Duality Theory)
Readership: Undergraduates; graduates and researchers interested in classical and basic optimization theory.
Keywords:Optimization;Nonlinear Programming;Linear ProgrammingReview:Key Features:Based on the preparation material (standard calculus and linear algebra presented in the first chapter), the presentation of all the major results of optimization are self-containedWe use Ekeland's variational principle to prove Fritz John's optimality conditions. As far as the author's knowledge, this is newThe theoretic results and examples have been balanced. All the major theorems are companioned by its proof and some examples. This enables the readers who are not interested in the proofs to proceed to learn how to use the theorems from the examples

GENRE
Science & Nature
RELEASED
2018
10 May
LANGUAGE
EN
English
LENGTH
236
Pages
PUBLISHER
World Scientific Publishing Company
SELLER
Ingram DV LLC
SIZE
38.8
MB
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