
The Algorithmic Foundations of Differential Privacy
now publishers Inc
1st Edition
Published on 11. August 2014
Book
Paperback/Softback
300 pages
978-1-60198-818-8 (ISBN)
Description
The problem of privacy-preserving data analysis has a long history spanning multiple disciplines. As electronic data about individuals becomes increasingly detailed, and as technology enables ever more powerful collection and curation of these data, the need increases for a robust, meaningful, and mathematically rigorous definition of privacy, together with a computationally rich class of algorithms that satisfy this definition. Differential Privacy is such a definition.
The Algorithmic Foundations of Differential Privacy starts out by motivating and discussing the meaning of differential privacy, and proceeds to explore the fundamental techniques for achieving differential privacy, and the application of these techniques in creative combinations, using the query-release problem as an ongoing example. A key point is that, by rethinking the computational goal, one can often obtain far better results than would be achieved by methodically replacing each step of a non-private computation with a differentially private implementation. Despite some powerful computational results, there are still fundamental limitations.
Virtually all the algorithms discussed herein maintain differential privacy against adversaries of arbitrary computational power - certain algorithms are computationally intensive, others are efficient. Computational complexity for the adversary and the algorithm are both discussed. The monograph then turns from fundamentals to applications other than query-release, discussing differentially private methods for mechanism design and machine learning. The vast majority of the literature on differentially private algorithms considers a single, static, database that is subject to many analyses. Differential privacy in other models, including distributed databases and computations on data streams, is discussed.
The Algorithmic Foundations of Differential Privacy is meant as a thorough introduction to the problems and techniques of differential privacy, and is an invaluable reference for anyone with an interest in the topic.
The Algorithmic Foundations of Differential Privacy starts out by motivating and discussing the meaning of differential privacy, and proceeds to explore the fundamental techniques for achieving differential privacy, and the application of these techniques in creative combinations, using the query-release problem as an ongoing example. A key point is that, by rethinking the computational goal, one can often obtain far better results than would be achieved by methodically replacing each step of a non-private computation with a differentially private implementation. Despite some powerful computational results, there are still fundamental limitations.
Virtually all the algorithms discussed herein maintain differential privacy against adversaries of arbitrary computational power - certain algorithms are computationally intensive, others are efficient. Computational complexity for the adversary and the algorithm are both discussed. The monograph then turns from fundamentals to applications other than query-release, discussing differentially private methods for mechanism design and machine learning. The vast majority of the literature on differentially private algorithms considers a single, static, database that is subject to many analyses. Differential privacy in other models, including distributed databases and computations on data streams, is discussed.
The Algorithmic Foundations of Differential Privacy is meant as a thorough introduction to the problems and techniques of differential privacy, and is an invaluable reference for anyone with an interest in the topic.
More details
Series
Language
English
Place of publication
Hanover
United States
Target group
Professional and scholarly
Dimensions
Height: 234 mm
Width: 156 mm
Thickness: 16 mm
Weight
425 gr
ISBN-13
978-1-60198-818-8 (9781601988188)
DOI
10.1561/0400000042
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
Content
Table of contents
Preface
1. The Promise of Differential Privacy
2. Basic Terms
3. Basic Techniques and Composition Theorems
4. Releasing Linear Queries with Correlated Error
5. Generalizations
6. Boosting for Queries
7. When Worst-Case Sensitivity is Atypical
8. Lower Bounds and Separation Results
9. Differential Privacy and Computational Complexity
10. Differential Privacy and Mechanism Design
11. Differential Privacy and Machine Learning
12. Additional Models
13. Reflections
Appendices
Acknowledgments
References
Preface
1. The Promise of Differential Privacy
2. Basic Terms
3. Basic Techniques and Composition Theorems
4. Releasing Linear Queries with Correlated Error
5. Generalizations
6. Boosting for Queries
7. When Worst-Case Sensitivity is Atypical
8. Lower Bounds and Separation Results
9. Differential Privacy and Computational Complexity
10. Differential Privacy and Mechanism Design
11. Differential Privacy and Machine Learning
12. Additional Models
13. Reflections
Appendices
Acknowledgments
References