Introduction to Privacy-Preserving Data Publishing

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A01=Ada Wai-Chee Fu
A01=Benjamin C.M. Fung
A01=Ke Wang
A01=Philip S. Yu
Adversary's Background
Adversary's Knowledge
Adversary’s Background
Adversary’s Knowledge
algorithm
Anonymity Requirement
anonymization
Anonymization Algorithm
Anonymization Operations
Anonymization Problem
attribute
Attribute Linkages
Author_Ada Wai-Chee Fu
Author_Benjamin C.M. Fung
Author_Ke Wang
Author_Philip S. Yu
Background Knowledge
Category=UBL
Category=UN
Category=UNF
Category=UR
Category=UY
complex data anonymisation
Data Holder
data privacy techniques
Data Recipients
Data Set
eq_bestseller
eq_computing
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
eq_non-fiction
Generalize T2
holder
Information Metrics
information utility optimisation
Integrated Table
Leaf Partition
mining
Privacy Models
Privacy Preserving Data Publishing
privacy protection for social network data
privacy risk assessment
Raw Data Table
recipient
Record Owners
relational database security
requirement
scalable data publishing methods
sensitive
Sensitive Attribute
Sensitive Information
Sensitive Values
Table T1
taxonomy
Taxonomy Tree
trees
Update Score

Product details

  • ISBN 9781420091489
  • Weight: 860g
  • Dimensions: 156 x 234mm
  • Publication Date: 02 Aug 2010
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Hardback
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Gaining access to high-quality data is a vital necessity in knowledge-based decision making. But data in its raw form often contains sensitive information about individuals. Providing solutions to this problem, the methods and tools of privacy-preserving data publishing enable the publication of useful information while protecting data privacy. Introduction to Privacy-Preserving Data Publishing: Concepts and Techniques presents state-of-the-art information sharing and data integration methods that take into account privacy and data mining requirements.

The first part of the book discusses the fundamentals of the field. In the second part, the authors present anonymization methods for preserving information utility for specific data mining tasks. The third part examines the privacy issues, privacy models, and anonymization methods for realistic and challenging data publishing scenarios. While the first three parts focus on anonymizing relational data, the last part studies the privacy threats, privacy models, and anonymization methods for complex data, including transaction, trajectory, social network, and textual data.

This book not only explores privacy and information utility issues but also efficiency and scalability challenges. In many chapters, the authors highlight efficient and scalable methods and provide an analytical discussion to compare the strengths and weaknesses of different solutions.

Benjamin C. M. Fung is an assistant professor in the Concordia Institute for Information Systems Engineering at Concordia University in Montreal, Quebec. Dr. Fung is also a research scientist and the treasurer of the National Cyber-Forensics and Training Alliance Canada (NCFTA Canada).

Ke Wang is a professor in the School of Computing Science at Simon Fraser University in Burnaby, British Columbia.

Ada Wai-Chee Fu is an associate professor in the Department of Computer Science and Engineering at the Chinese University of Hong Kong.

Philip S. Yu is a professor in the Department of Computer Science and the Wexler Chair in Information and Technology at the University of Illinois at Chicago.

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