Federated Learning

529Citations
Citations of this article
544Readers
Mendeley users who have this article in their library.
Get full text

Abstract

How is it possible to allow multiple data owners to collaboratively train and use a shared prediction model while keeping all the local training data private Traditional machine learning approaches need to combine all data at one location, typically a data center, which may very well violate the laws on user privacy and data confidentiality. Today, many parts of the world demand that technology companies treat user data carefully according to user-privacy laws. The European Union's General Data Protection Regulation (GDPR) is a prime example. In this book, we describe how federated machine learning addresses this problem with novel solutions combining distributed machine learning, cryptography and security, and incentive mechanism design based on economic principles and game theory. We explain different types of privacy-preserving machine learning solutions and their technological backgrounds, and highlight some representative practical use cases. We show how federated learning can become the foundation of next-generation machine learning that caters to technological and societal needs for responsible AI development and application. Table of Contents: Preface / Acknowledgments / Introduction / Background / Distributed Machine Learning / Horizontal Federated Learning / Vertical Federated Learning / Federated Transfer Learning / Incentive Mechanism Design for Federated Learning / Federated Learning for Vision, Language, and Recommendation / Federated Reinforcement Learning / Selected Applications / Summary and Outlook / Bibliography / Authors' Biographies

Register to see more suggestions

Mendeley helps you to discover research relevant for your work.

Already have an account?

Cite

CITATION STYLE

APA

Yang, Q., Liu, Y., Cheng, Y., Kang, Y., Chen, T., & Yu, H. (2020). Federated Learning. In Synthesis Lectures on Artificial Intelligence and Machine Learning (Vol. 13, pp. 1–207). Morgan and Claypool Publishers. https://doi.org/10.2200/S00960ED2V01Y201910AIM043

Readers' Seniority

Tooltip

PhD / Post grad / Masters / Doc 166

67%

Researcher 43

17%

Lecturer / Post doc 23

9%

Professor / Associate Prof. 16

6%

Readers' Discipline

Tooltip

Computer Science 175

66%

Engineering 68

26%

Business, Management and Accounting 12

5%

Mathematics 9

3%

Article Metrics

Tooltip
Mentions
News Mentions: 2

Save time finding and organizing research with Mendeley

Sign up for free