Differential Privacy
eBook - PDF

Differential Privacy

From Theory to Practice

  1. English
  2. PDF
  3. Available on iOS & Android
eBook - PDF

Differential Privacy

From Theory to Practice

About this book

Over the last decade, differential privacy (DP) has emerged as the de facto standard privacy notion for research in privacy-preserving data analysis and publishing. The DP notion offers strong privacy guarantee and has been applied to many data analysis tasks.

This Synthesis Lecture is the first of two volumes on differential privacy. This lecture differs from the existing books and surveys on differential privacy in that we take an approach balancing theory and practice. We focus on empirical accuracy performances of algorithms rather than asymptotic accuracy guarantees. At the same time, we try to explain why these algorithms have those empirical accuracy performances. We also take a balanced approach regarding the semantic meanings of differential privacy, explaining both its strong guarantees and its limitations.

We start by inspecting the definition and basic properties of DP, and the main primitives for achieving DP. Then, we give a detailed discussion on the the semantic privacy guarantee provided by DP and the caveats when applying DP. Next, we review the state of the art mechanisms for publishing histograms for low-dimensional datasets, mechanisms for conducting machine learning tasks such as classification, regression, and clustering, and mechanisms for publishing information to answer marginal queries for high-dimensional datasets. Finally, we explain the sparse vector technique, including the many errors that have been made in the literature using it.

The planned Volume 2 will cover usage of DP in other settings, including high-dimensional datasets, graph datasets, local setting, location privacy, and so on. We will also discuss various relaxations of DP.

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Yes, you can access Differential Privacy by Ninghui Li,Min Lyu,Dong Su,Weining Yang in PDF and/or ePUB format, as well as other popular books in Computer Science & Cyber Security. We have over one million books available in our catalogue for you to explore.

Table of contents

  1. Cover
  2. Copyright
  3. Title Page
  4. Contents
  5. Acknowledgments
  6. Introduction
  7. A Primer on -Differential Privacy
  8. What Does DP Mean?
  9. Publishing Histograms for Low-dimensional Datasets
  10. Differentially Private Optimization
  11. Publishing Marginals
  12. The Sparse Vector Technique
  13. Bibliography
  14. Authors' Biographies