
Differential Privacy in Artificial Intelligence
From, Theory to Practice
now publishers Inc
Published on 23. July 2025
Book
Hardback
630 pages
978-1-63828-476-5 (ISBN)
Description
The ebook edition of this title is Open Access and freely available to read online.
Differential Privacy in Artificial Intelligence: From Theory to Practice is a comprehensive resource designed to review the principles and applications of differential privacy in a world increasingly driven by data. This book delves into the theoretical underpinnings of differential privacy, its use in machine learning systems, practical implementation details, and its broader social and legal ramifications. Intended as a primer and a deep dive, it lays a solid foundation by introducing essential concepts and mechanisms critical to understanding differential privacy.
From theoretical foundations to practical application, the book is organized into five distinct parts. Part I reviews the foundational notions of differential privacy in the central and local models, delving into composition and privacy amplification. The discussion extends to practical strategies for data release and the creation of synthetic data, which is essential for real-world applications. Part II focuses on the application of differential privacy in optimization and learning, examining the integration of privacy measures in machine learning, including private optimization methods and private federated learning.
Beyond technical applications, the book highlights the use of differential privacy in critical sectors such as healthcare and energy, and discusses its implications in image and video analysis in Part III. Part IV provides a thorough look at the tools and challenges in deploying privacy-preserving models, including insights into programming frameworks and machine learning tools. Finally, Part V addresses the societal impact of differential privacy, discussing its intersection with public policy, law, fairness, and bias.
Targeted at researchers, practitioners, and policymakers; Differential Privacy in Artificial Intelligence: From Theory to Practice aims to be an essential guide for anyone committed to advancing privacy in the digital age, providing the knowledge needed to develop and deploy effective and ethical privacy solutions across various domains.
Differential Privacy in Artificial Intelligence: From Theory to Practice is a comprehensive resource designed to review the principles and applications of differential privacy in a world increasingly driven by data. This book delves into the theoretical underpinnings of differential privacy, its use in machine learning systems, practical implementation details, and its broader social and legal ramifications. Intended as a primer and a deep dive, it lays a solid foundation by introducing essential concepts and mechanisms critical to understanding differential privacy.
From theoretical foundations to practical application, the book is organized into five distinct parts. Part I reviews the foundational notions of differential privacy in the central and local models, delving into composition and privacy amplification. The discussion extends to practical strategies for data release and the creation of synthetic data, which is essential for real-world applications. Part II focuses on the application of differential privacy in optimization and learning, examining the integration of privacy measures in machine learning, including private optimization methods and private federated learning.
Beyond technical applications, the book highlights the use of differential privacy in critical sectors such as healthcare and energy, and discusses its implications in image and video analysis in Part III. Part IV provides a thorough look at the tools and challenges in deploying privacy-preserving models, including insights into programming frameworks and machine learning tools. Finally, Part V addresses the societal impact of differential privacy, discussing its intersection with public policy, law, fairness, and bias.
Targeted at researchers, practitioners, and policymakers; Differential Privacy in Artificial Intelligence: From Theory to Practice aims to be an essential guide for anyone committed to advancing privacy in the digital age, providing the knowledge needed to develop and deploy effective and ethical privacy solutions across various domains.
More details
Language
English
Place of publication
United States
Publishing group
Emerald Publishing Inc
Target group
Professional and scholarly
Dimensions
Height: 240 mm
Width: 161 mm
Thickness: 38 mm
Weight
1101 gr
ISBN-13
978-1-63828-476-5 (9781638284765)
Copyright in bibliographic data and cover images is held by Nielsen Book Services Limited or by the publishers or by their respective licensors: all rights reserved.
Schweitzer Classification
Persons
Editor
University of Virginia, USA
Georgia Institute of Technology, USA
Content
Chapter 1. Overview and Fundamental Techniques
Chapter 2. Local Differential Privacy for Privacy-preserving Machine Learning
Chapter 3. Composition of Differential Privacy & Privacy Amplification by Subsampling
Chapter 4. Data Release and Synthetic Data
Chapter 5. Privacy Risks in Machine Learning
Chapter 6. Private Optimization
Chapter 7. Private Deep Learning
Chapter 8. Private Federated Learning
Chapter 9. Differential Privacy and Medical Data Analysis
Chapter 10. Differential Privacy in Energy Systems
Chapter 11. Image and Video Data Analysis
Chapter 12. Programming Frameworks for Differential Privacy
Chapter 13. Machine Learning Tools
Chapter 14. Challenges and Solutions to Deploying Differential Privacy
Chapter 15. Testing Private Models
Chapter 16. Differential Privacy, Public Policy, and the Law
Chapter 17. Relationships between Differential Privacy and Algorithmic Fairness
Chapter 2. Local Differential Privacy for Privacy-preserving Machine Learning
Chapter 3. Composition of Differential Privacy & Privacy Amplification by Subsampling
Chapter 4. Data Release and Synthetic Data
Chapter 5. Privacy Risks in Machine Learning
Chapter 6. Private Optimization
Chapter 7. Private Deep Learning
Chapter 8. Private Federated Learning
Chapter 9. Differential Privacy and Medical Data Analysis
Chapter 10. Differential Privacy in Energy Systems
Chapter 11. Image and Video Data Analysis
Chapter 12. Programming Frameworks for Differential Privacy
Chapter 13. Machine Learning Tools
Chapter 14. Challenges and Solutions to Deploying Differential Privacy
Chapter 15. Testing Private Models
Chapter 16. Differential Privacy, Public Policy, and the Law
Chapter 17. Relationships between Differential Privacy and Algorithmic Fairness