Sparse Polynomial Optimization: Theory And Practice
Title | Sparse Polynomial Optimization: Theory And Practice PDF eBook |
Author | Victor Magron |
Publisher | World Scientific |
Pages | 223 |
Release | 2023-04-25 |
Genre | Mathematics |
ISBN | 1800612966 |
Many applications, including computer vision, computer arithmetic, deep learning, entanglement in quantum information, graph theory and energy networks, can be successfully tackled within the framework of polynomial optimization, an emerging field with growing research efforts in the last two decades. One key advantage of these techniques is their ability to model a wide range of problems using optimization formulations. Polynomial optimization heavily relies on the moment-sums of squares (moment-SOS) approach proposed by Lasserre, which provides certificates for positive polynomials. On the practical side, however, there is 'no free lunch' and such optimization methods usually encompass severe scalability issues. Fortunately, for many applications, including the ones formerly mentioned, we can look at the problem in the eyes and exploit the inherent data structure arising from the cost and constraints describing the problem.This book presents several research efforts to resolve this scientific challenge with important computational implications. It provides the development of alternative optimization schemes that scale well in terms of computational complexity, at least in some identified class of problems. It also features a unified modeling framework to handle a wide range of applications involving both commutative and noncommutative variables, and to solve concretely large-scale instances. Readers will find a practical section dedicated to the use of available open-source software libraries.This interdisciplinary monograph is essential reading for students, researchers and professionals interested in solving optimization problems with polynomial input data.
Sparse Optimization Theory and Methods
Title | Sparse Optimization Theory and Methods PDF eBook |
Author | Yun-Bin Zhao |
Publisher | CRC Press |
Pages | 222 |
Release | 2018-07-04 |
Genre | Business & Economics |
ISBN | 1351624148 |
Seeking sparse solutions of underdetermined linear systems is required in many areas of engineering and science such as signal and image processing. The efficient sparse representation becomes central in various big or high-dimensional data processing, yielding fruitful theoretical and realistic results in these fields. The mathematical optimization plays a fundamentally important role in the development of these results and acts as the mainstream numerical algorithms for the sparsity-seeking problems arising from big-data processing, compressed sensing, statistical learning, computer vision, and so on. This has attracted the interest of many researchers at the interface of engineering, mathematics and computer science. Sparse Optimization Theory and Methods presents the state of the art in theory and algorithms for signal recovery under the sparsity assumption. The up-to-date uniqueness conditions for the sparsest solution of underdertemined linear systems are described. The results for sparse signal recovery under the matrix property called range space property (RSP) are introduced, which is a deep and mild condition for the sparse signal to be recovered by convex optimization methods. This framework is generalized to 1-bit compressed sensing, leading to a novel sign recovery theory in this area. Two efficient sparsity-seeking algorithms, reweighted l1-minimization in primal space and the algorithm based on complementary slackness property, are presented. The theoretical efficiency of these algorithms is rigorously analysed in this book. Under the RSP assumption, the author also provides a novel and unified stability analysis for several popular optimization methods for sparse signal recovery, including l1-mininization, Dantzig selector and LASSO. This book incorporates recent development and the author’s latest research in the field that have not appeared in other books.
Sparse Polynomial Approximation of High-Dimensional Functions
Title | Sparse Polynomial Approximation of High-Dimensional Functions PDF eBook |
Author | Ben Adcock |
Publisher | Society for Industrial and Applied Mathematics (SIAM) |
Pages | 0 |
Release | 2021 |
Genre | Approximation theory |
ISBN | 9781611976878 |
"This is a book about polynomial approximation in high dimensions"--
Handbook on Semidefinite, Conic and Polynomial Optimization
Title | Handbook on Semidefinite, Conic and Polynomial Optimization PDF eBook |
Author | Miguel F. Anjos |
Publisher | Springer Science & Business Media |
Pages | 955 |
Release | 2011-11-19 |
Genre | Business & Economics |
ISBN | 1461407699 |
Semidefinite and conic optimization is a major and thriving research area within the optimization community. Although semidefinite optimization has been studied (under different names) since at least the 1940s, its importance grew immensely during the 1990s after polynomial-time interior-point methods for linear optimization were extended to solve semidefinite optimization problems. Since the beginning of the 21st century, not only has research into semidefinite and conic optimization continued unabated, but also a fruitful interaction has developed with algebraic geometry through the close connections between semidefinite matrices and polynomial optimization. This has brought about important new results and led to an even higher level of research activity. This Handbook on Semidefinite, Conic and Polynomial Optimization provides the reader with a snapshot of the state-of-the-art in the growing and mutually enriching areas of semidefinite optimization, conic optimization, and polynomial optimization. It contains a compendium of the recent research activity that has taken place in these thrilling areas, and will appeal to doctoral students, young graduates, and experienced researchers alike. The Handbook’s thirty-one chapters are organized into four parts: Theory, covering significant theoretical developments as well as the interactions between conic optimization and polynomial optimization; Algorithms, documenting the directions of current algorithmic development; Software, providing an overview of the state-of-the-art; Applications, dealing with the application areas where semidefinite and conic optimization has made a significant impact in recent years.
Semidefinite Optimization and Convex Algebraic Geometry
Title | Semidefinite Optimization and Convex Algebraic Geometry PDF eBook |
Author | Grigoriy Blekherman |
Publisher | SIAM |
Pages | 487 |
Release | 2013-03-21 |
Genre | Mathematics |
ISBN | 1611972280 |
An accessible introduction to convex algebraic geometry and semidefinite optimization. For graduate students and researchers in mathematics and computer science.
Sparse Polynomial Optimization
Title | Sparse Polynomial Optimization PDF eBook |
Author | Victor Magron |
Publisher | Wspc (Europe) |
Pages | 0 |
Release | 2023 |
Genre | Mathematical optimization |
ISBN | 9781800612945 |
"For the first time, a detailed account of the theory of sparse polynomial optimization along with numerous illustrations of the theory in explicit examples are shown A practical section is dedicated to the use of available open-source software libraries to help people tackle their own problems. Suited for graduate students, engineers and researchers in optimization, applied mathematics, quantum physics, deep learning, power systems, etc. This book is complementary to The Moment-SOS Hierarchy by Henrion, Korda and Lasserre, in the sense that it does focus on theoretical and practical tools to solve large-scale polynomial optimization problems in an efficient way"--
Moment and Polynomial Optimization
Title | Moment and Polynomial Optimization PDF eBook |
Author | Jiawang Nie |
Publisher | SIAM |
Pages | 484 |
Release | 2023-06-15 |
Genre | Mathematics |
ISBN | 1611977606 |
Moment and polynomial optimization is an active research field used to solve difficult questions in many areas, including global optimization, tensor computation, saddle points, Nash equilibrium, and bilevel programs, and it has many applications. The author synthesizes current research and applications, providing a systematic introduction to theory and methods, a comprehensive approach for extracting optimizers and solving truncated moment problems, and a creative methodology for using optimality conditions to construct tight Moment-SOS relaxations. This book is intended for applied mathematicians, engineers, and researchers entering the field. It can be used as a textbook for graduate students in courses on convex optimization, polynomial optimization, and matrix and tensor optimization.