Federated and Transfer Learning

Federated and Transfer Learning

Roozbeh Razavi-Far , Boyu Wang , Matthew E. Taylor
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Oct 1, 2022 · 英語 · ハードカバー (379 ページ)
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本の詳細

形式 ハードカバー
ページ数 379
言語 英語
公開されました Oct 1, 2022
出版社 Springer
ISBN-10 3031117476
ISBN-13 9783031117473

説明

The work explores the evolving fields of federated and transfer learning, presenting a comprehensive overview of methodologies for learning from decentralized data. It delves into how these innovative approaches enable models to learn collaboratively while maintaining data privacy. Through an extensive collection of research, the authors uncover practical solutions and algorithms that facilitate this burgeoning area of study.

Readers will gain insights into the theoretical underpinnings and real-world applications of federated learning, as well as the importance of transfer learning in adapting knowledge across various domains. This synthesis of cutting-edge advancements serves as a valuable resource for researchers and practitioners looking to navigate the complexities of modern machine learning landscapes.
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