Data Cleaning - A Practical Perspective (Electronic book text)

,
Data warehouses consolidate various activities of a business and often form the backbone for generating reports that support important business decisions. Errors in data tend to creep in for a variety of reasons. Some of these reasons include errors during input data collection and errors while merging data collected independently across different databases. These errors in data warehouses often result in erroneous upstream reports, and could impact business decisions negatively. Therefore, one of the critical challenges while maintaining large data warehouses is that of ensuring the quality of data in the data warehouse remains high. The process of maintaining high data quality is commonly referred to as data cleaning.In this book, we first discuss the goals of data cleaning. Often, the goals of data cleaning are not well defined and could mean different solutions in different scenarios. Toward clarifying these goals, we abstract out a common set of data cleaning tasks that often need to be addressed. This abstraction allows us to develop solutions for these common data cleaning tasks. We then discuss a few popular approaches for developing such solutions. In particular, we focus on an operator-centric approach for developing a data cleaning platform. The operator-centric approach involves the development of customizable operators that could be used as building blocks for developing common solutions. This is similar to the approach of relational algebra for query processing. The basic set of operators can be put together to build complex queries. Finally, we discuss the development of custom scripts which leverage the basic data cleaning operators along with relational operators to implement effective solutions for data cleaning tasks.Table of Contents: Preface / Acknowledgments / Introduction / Technological Approaches / Similarity Functions / Operator: Similarity Join / Operator: Clustering / Operator: Parsing / Task: Record Matching / Task: Deduplication / Data Cleaning Scripts / Conclusion / Bibliography / Authors' Biographies

Delivery AdviceNot available

Toggle WishListAdd to wish list
Review this Item

Product Description

Data warehouses consolidate various activities of a business and often form the backbone for generating reports that support important business decisions. Errors in data tend to creep in for a variety of reasons. Some of these reasons include errors during input data collection and errors while merging data collected independently across different databases. These errors in data warehouses often result in erroneous upstream reports, and could impact business decisions negatively. Therefore, one of the critical challenges while maintaining large data warehouses is that of ensuring the quality of data in the data warehouse remains high. The process of maintaining high data quality is commonly referred to as data cleaning.In this book, we first discuss the goals of data cleaning. Often, the goals of data cleaning are not well defined and could mean different solutions in different scenarios. Toward clarifying these goals, we abstract out a common set of data cleaning tasks that often need to be addressed. This abstraction allows us to develop solutions for these common data cleaning tasks. We then discuss a few popular approaches for developing such solutions. In particular, we focus on an operator-centric approach for developing a data cleaning platform. The operator-centric approach involves the development of customizable operators that could be used as building blocks for developing common solutions. This is similar to the approach of relational algebra for query processing. The basic set of operators can be put together to build complex queries. Finally, we discuss the development of custom scripts which leverage the basic data cleaning operators along with relational operators to implement effective solutions for data cleaning tasks.Table of Contents: Preface / Acknowledgments / Introduction / Technological Approaches / Similarity Functions / Operator: Similarity Join / Operator: Clustering / Operator: Parsing / Task: Record Matching / Task: Deduplication / Data Cleaning Scripts / Conclusion / Bibliography / Authors' Biographies

Customer Reviews

No reviews or ratings yet - be the first to create one!

Product Details

General

Imprint

Morgan & Claypool

Country of origin

United States

Series

Synthesis Lectures on Data Management

Release date

September 2013

Availability

We don't currently have any sources for this product. If you add this item to your wish list we will let you know when it becomes available.

Authors

,

Format

Electronic book text - Windows

Pages

85

ISBN-13

978-1-60845-678-9

Barcode

9781608456789

Categories

LSN

1-60845-678-1



Trending On Loot