Data Quality / Edition 1

Data Quality / Edition 1

by Richard Y. Wang, Mostapha Ziad, Yang W. Lee
     
 

ISBN-10: 0792372158

ISBN-13: 9780792372158

Pub. Date: 11/01/2000

Publisher: Springer US

Data Quality provides an exposé of research and practice in the data quality field for technically oriented readers. It is based on the research conducted at the MIT Total Data Quality Management (TDQM) program and work from other leading research institutions. This book is intended primarily for researchers, practitioners, educators and graduate

Overview

Data Quality provides an exposé of research and practice in the data quality field for technically oriented readers. It is based on the research conducted at the MIT Total Data Quality Management (TDQM) program and work from other leading research institutions. This book is intended primarily for researchers, practitioners, educators and graduate students in the fields of Computer Science, Information Technology, and other interdisciplinary areas. It forms a theoretical foundation that is both rigorous and relevant for dealing with advanced issues related to data quality. Written with the goal to provide an overview of the cumulated research results from the MIT TDQM research perspective as it relates to database research, this book is an excellent introduction to Ph.D. who wish to further pursue their research in the data quality area. It is also an excellent theoretical introduction to IT professionals who wish to gain insight into theoretical results in the technically-oriented data quality area, and apply some of the key concepts to their practice.

Product Details

ISBN-13:
9780792372158
Publisher:
Springer US
Publication date:
11/01/2000
Series:
Advances in Database Systems Series , #23
Edition description:
2001
Pages:
167
Product dimensions:
9.21(w) x 6.14(h) x 0.56(d)

Table of Contents

Preface. 1. Introduction. 2. Extending the Relational Model to Capture Data Quality Attributes. 3. Extending the ER Model to Represent Data Quality Requirements. 4. Automating Data Quality Judgment. 5. Developing a Data Quality Algebra. 6. The MIT Context Interchange Project. 7. The European Union Data Warehouse Quality Project. 8. The Purdue University Data Quality Project. 9. Conclusion. Bibliography. Index.

Customer Reviews

Average Review:

Write a Review

and post it to your social network

     

Most Helpful Customer Reviews

See all customer reviews >