Convexity and its Applications in Discrete and Continuous Optimization
Using a pedagogical, unified approach, this book presents both the analytic and combinatorial aspects of convexity and its applications in optimization. On the structural side, this is done via an exposition of classical convex analysis and geometry, along with polyhedral theory and geometry of numbers. On the algorithmic/optimization side, this is done by the first ever exposition of the theory of general mixed-integer convex optimization in a textbook setting. Classical continuous convex optimization and pure integer convex optimization are presented as special cases, without compromising on the depth of either of these areas. For this purpose, several new developments from the past decade are presented for the first time outside technical research articles: discrete Helly numbers, new insights into sublinear functions, and best known bounds on the information and algorithmic complexity of mixed-integer convex optimization. Pedagogical explanations and more than 300 exercises make this book ideal for students and researchers.
1147031688
Convexity and its Applications in Discrete and Continuous Optimization
Using a pedagogical, unified approach, this book presents both the analytic and combinatorial aspects of convexity and its applications in optimization. On the structural side, this is done via an exposition of classical convex analysis and geometry, along with polyhedral theory and geometry of numbers. On the algorithmic/optimization side, this is done by the first ever exposition of the theory of general mixed-integer convex optimization in a textbook setting. Classical continuous convex optimization and pure integer convex optimization are presented as special cases, without compromising on the depth of either of these areas. For this purpose, several new developments from the past decade are presented for the first time outside technical research articles: discrete Helly numbers, new insights into sublinear functions, and best known bounds on the information and algorithmic complexity of mixed-integer convex optimization. Pedagogical explanations and more than 300 exercises make this book ideal for students and researchers.
69.99 In Stock
Convexity and its Applications in Discrete and Continuous Optimization

Convexity and its Applications in Discrete and Continuous Optimization

by Amitabh Basu
Convexity and its Applications in Discrete and Continuous Optimization

Convexity and its Applications in Discrete and Continuous Optimization

by Amitabh Basu

Hardcover

$69.99 
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Overview

Using a pedagogical, unified approach, this book presents both the analytic and combinatorial aspects of convexity and its applications in optimization. On the structural side, this is done via an exposition of classical convex analysis and geometry, along with polyhedral theory and geometry of numbers. On the algorithmic/optimization side, this is done by the first ever exposition of the theory of general mixed-integer convex optimization in a textbook setting. Classical continuous convex optimization and pure integer convex optimization are presented as special cases, without compromising on the depth of either of these areas. For this purpose, several new developments from the past decade are presented for the first time outside technical research articles: discrete Helly numbers, new insights into sublinear functions, and best known bounds on the information and algorithmic complexity of mixed-integer convex optimization. Pedagogical explanations and more than 300 exercises make this book ideal for students and researchers.

Product Details

ISBN-13: 9781108837590
Publisher: Cambridge University Press
Publication date: 01/30/2025
Pages: 328
Product dimensions: 6.18(w) x 9.21(h) x 0.94(d)

About the Author

Amitabh Basu is Professor of Applied Mathematics and Statistics at Johns Hopkins University. He has received the NSF CAREER award and the Egon Balas Prize from the INFORMS Optimization Society. He serves on the editorial boards of 'Mathematics of Operations Research,' 'Mathematical Programming,' 'SIAM Journal on Optimization,' and the 'MOS-SIAM Series on Optimization.'

Table of Contents

1. Preliminaries; Part I. Structural Aspects: 2. Convex sets; 3. Convex functions; 4. Geometry of numbers; Part II. Optimization: 5. Ingredients of mathematical optimization; 6. Complexity of convex optimization with integer variables; 7. Certificates and duality; Hints to selected exercises; References; Index.
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