Integrity Constraints on Rich Data Types

Integrity Constraints on Rich Data Types

EnglishPaperback / softbackPrint on demand
Song, Shaoxu
Springer, Berlin
EAN: 9783031271793
Print on demand
Delivery on Wednesday, 3. of July 2024
€45.54
Common price €50.60
Discount 10%
pc
Do you want this product today?
Oxford Bookshop Banská Bystrica
not available
Oxford Bookshop Bratislava
not available
Oxford Bookshop Košice
not available

Detailed information

This book examines the recent trend of extending data dependencies to adapt to rich data types in order to address variety and veracity issues in big data. Readers will be guided through the full range of rich data types where data dependencies have been successfully applied, including categorical data with equality relationships, heterogeneous data with similarity relationships, numerical data with order relationships, sequential data with timestamps, and graph data with complicated structures. The text will also discuss interesting constraints on ordering or similarity relationships contained in novel classes of data dependencies in addition to those in equality relationships, e.g., considered in functional dependencies (FDs). In addition to exploring the concepts of these data dependency notations, the book investigates the extension relationships between data dependencies, such as conditional functional dependencies (CFDs) that extend conventional functional dependencies (FDs). This forms in the book a family tree of extensions, mostly rooted in FDs, that help illuminate the expressive power of various data dependencies. Moreover, the book points to work on the discovery of dependencies from data, since data dependencies are often unlikely to be manually specified in a traditional way, given the huge volume and high variety in big data. It further outlines the applications of the extended data dependencies, in particular in data quality practice. Altogether, this book provides a comprehensive guide for readers to select proper data dependencies for their applications that have sufficient expressive power and reasonable discovery cost. Finally, the book concludes with several directions of future studies on emerging data.
EAN 9783031271793
ISBN 3031271793
Binding Paperback / softback
Publisher Springer, Berlin
Publication date April 1, 2024
Pages 146
Language English
Dimensions 240 x 168
Country Switzerland
Authors Chen, Lei; Song, Shaoxu
Series Synthesis Lectures on Data Management