Accelerated Optimization for Machine Learning First-Order Algorithms
Título:
Accelerated Optimization for Machine Learning First-Order Algorithms
ISBN:
9789811529108
Autor Pessoal:
Edição:
1st ed. 2020.
PRODUCTION_INFO:
Singapore : Springer Nature Singapore : Imprint: Springer, 2020.
Descrição Física:
XXIV, 275 p. 36 illus. online resource.
Conteúdo:
Chapter 1. Introduction -- Chapter 2. Accelerated Algorithms for Unconstrained Convex Optimization -- Chapter 3. Accelerated Algorithms for Constrained Convex Optimization -- Chapter 4. Accelerated Algorithms for Nonconvex Optimization -- Chapter 5. Accelerated Stochastic Algorithms -- Chapter 6. Accelerated Paralleling Algorithms -- Chapter 7. Conclusions.-.
Resumo:
This book on optimization includes forewords by Michael I. Jordan, Zongben Xu and Zhi-Quan Luo. Machine learning relies heavily on optimization to solve problems with its learning models, and first-order optimization algorithms are the mainstream approaches. The acceleration of first-order optimization algorithms is crucial for the efficiency of machine learning. Written by leading experts in the field, this book provides a comprehensive introduction to, and state-of-the-art review of accelerated first-order optimization algorithms for machine learning. It discusses a variety of methods, including deterministic and stochastic algorithms, where the algorithms can be synchronous or asynchronous, for unconstrained and constrained problems, which can be convex or non-convex. Offering a rich blend of ideas, theories and proofs, the book is up-to-date and self-contained. It is an excellent reference resource for users who are seeking faster optimization algorithms, as well as for graduate students and researchers wanting to grasp the frontiers of optimization in machine learning in a short time.
Autor Corporativo Adicionado:
Acesso Eletrônico:
Full Text Available From Springer Nature Computer Science 2020 Packages
LANGUAGE:
Inglês