|Other titles||EBSCO eBook collection.|
|Statement||Richard Y. Wang, Mostapha Ziad, Yang W. Lee|
|Series||The Kluwer international series on advances in database systems -- 23|
|Contributions||Ziad, Mostapha, Lee, Yang W.|
|LC Classifications||QA76.9.E95 W36 2002eb|
|The Physical Object|
|Format||[electronic resource] /|
|Pagination||xv, 167 p.|
|Number of Pages||167|
Data Quality: The Accuracy Dimension is about assessing the quality of corporate data and improving its accuracy using the data profiling method. Corporate data is increasingly important as companies Cited by: Here are a few you could consider. For a business perspective and guidance - Executing Data Quality Projects: Ten Steps to Quality Data and Trusted Information by Dannette McGilvray. : Executing Data Quality . The DQAF (Data Quality Assessment Framework) outlined in this book presents a dissection of the “Data Quality Dimensions” into a practical, generic “menu” that can serve as a great starting point for any company to begin developing a set of measurements integral to a good data quality program. This book is a “must read” for anyone - IT or Business - working in the data Cited by: - David Plotkin, Data Quality Manager, California State Automobile Association This book is a gem. Tested, validated and polished over a distinguished career as a practitioner and consultant, Danette's Ten Steps methodology shines as a unique and much needed contribution to the information quality Cited by:
Discover the best Total Quality Management in Best Sellers. Find the top most popular items in Amazon Books Best Sellers. The book reviews some underlying principles of data analytics, and is a great read for an aspiring data-driven decision maker who wants to intelligently participate in using big data and /5(). data quality assessment is a precondition for informing the users about the possible uses of the data, or which results could be published with or without a warning. Indeed, without good. This chapter examines the most important technology available to the data quality assurance team: data profiling. Data profiling is defined as the application of data analysis techniques to existing data stores for the purpose of determining the actual content, structure, and quality of the data.
- Tom Redman, author of "Data Quality: The Field Guide" and "Data Driven" "As an Enterprise DQ Operations Manager, "Executing Data Quality Projects" is a must that details the "how to" methodology to execute data . Data quality in relation to data initiatives like data migration, MDM, data governance, etc. Data quality myths, challenges, and critical success factors Students, academicians, professionals, and researchers can all use the content in this book . The Data Quality Assessment Framework shows you how to measure and monitor data quality, ensuring quality over time. You’ll start with general concepts of measurement and work your way through a detailed framework of more than three dozen measurement types related to five objective dimensions of quality. High-quality data enables strategic systems to integrate all related data to provide a complete view of the organization and the interrelationships within it. Data quality is an essential characteristic that .