Preserving Privacy Against Side-Channel Leaks From Data Publishing to Web Applications – PDF/EPUB Version Downloadable

$49.99

Author(s): Wen Ming Liu; Lingyu Wang
Publisher: Springer
ISBN: 9783319426426
Edition:

Important: No Access Code

Delivery: This can be downloaded Immediately after purchasing.

Version: Only PDF Version.

Compatible Devices: Can be read on any device (Kindle, NOOK, Android/IOS devices, Windows, MAC)

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Description

This book offers a novel approach to data privacy by unifying side-channel attacks within a general conceptual framework. This book then applies the framework in three concrete domains.  First, the book examines privacy-preserving data publishing with publicly-known algorithms, studying a generic strategy independent of data utility measures and syntactic privacy properties before discussing an extended approach to improve the efficiency. Next, the book explores privacy-preserving traffic padding in Web applications, first via a model to quantify privacy and cost and then by introducing randomness to provide background knowledge-resistant privacy guarantee. Finally, the book considers privacy-preserving smart metering by proposing a light-weight approach to simultaneously preserving users’ privacy and ensuring billing accuracy.  Designed for researchers and professionals, this book is also suitable for advanced-level students interested in privacy, algorithms, or web applications.