Federated and Transfer Learning Hardback
Edited by Roozbeh Razavi-Far, Boyu Wang, Matthew E. Taylor, Qiang Yang
Part of the Adaptation, Learning, and Optimization series
Hardback
- Information
Description
This book provides a collection of recent research works on learning from decentralized data, transferring information from one domain to another, and addressing theoretical issues on improving the privacy and incentive factors of federated learning as well as its connection with transfer learning and reinforcement learning.
Over the last few years, the machine learning community has become fascinated by federated and transfer learning.
Transfer and federated learning have achieved great success and popularity in many different fields of application.
The intended audience of this book is students and academics aiming to apply federated and transfer learning to solve different kinds of real-world problems, as well as scientists, researchers, and practitioners in AI industries, autonomous vehicles, and cyber-physical systems who wish to pursue new scientific innovations and update their knowledge on federated and transfer learning and their applications.
Information
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Available to Order - This title is available to order, with delivery expected within 2 weeks
- Format:Hardback
- Pages:371 pages, 80 Illustrations, color; 10 Illustrations, black and white; VIII, 371 p. 90 illus., 80 il
- Publisher:Springer International Publishing AG
- Publication Date:01/10/2022
- Category:
- ISBN:9783031117473
Information
-
Available to Order - This title is available to order, with delivery expected within 2 weeks
- Format:Hardback
- Pages:371 pages, 80 Illustrations, color; 10 Illustrations, black and white; VIII, 371 p. 90 illus., 80 il
- Publisher:Springer International Publishing AG
- Publication Date:01/10/2022
- Category:
- ISBN:9783031117473