Data Cleaning

Data Cleaning

by Ihab F. Ilyas, Xu Chu
Data Cleaning

Data Cleaning

by Ihab F. Ilyas, Xu Chu

eBook

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Overview

This is an overview of the end-to-end data cleaning process. Data quality is one of the most important problems in data management, since dirty data often leads to inaccurate data analytics results and incorrect business decisions.

Poor data across businesses and the U.S. government are reported to cost trillions of dollars a year. Multiple surveys show that dirty data is the most common barrier faced by data scientists. Not surprisingly, developing effective and efficient data cleaning solutions is challenging and is rife with deep theoretical and engineering problems. This book is about data cleaning, which is used to refer to all kinds of tasks and activities to detect and repair errors in the data. Rather than focus on a particular data cleaning task, this book describes various error detection and repair methods, and attempts to anchor these proposals with multiple taxonomies and views. Specifically, it covers four of the most common and important data cleaning tasks, namely, outlier detection, data transformation, error repair (including imputing missing values), and data deduplication. Furthermore, due to the increasing popularity and applicability of machine learning techniques, it includes a chapter that specifically explores how machine learning techniques are used for data cleaning, and how data cleaning is used to improve machine learning models.

This book is intended to serve as a useful reference for researchers and practitioners who are interested in the area of data quality and data cleaning. It can also be used as a textbook for a graduate course. Although we aim at covering state-of-the-art algorithms and techniques, we recognize that data cleaning is still an active field of research and therefore provide future directions of research whenever appropriate.


Product Details

ISBN-13: 9781450371544
Publisher: Association for Computing Machinery and Morgan & Claypool Publishers
Publication date: 06/18/2019
Sold by: Barnes & Noble
Format: eBook
Pages: 282
File size: 28 MB
Note: This product may take a few minutes to download.
Age Range: 18 Years

About the Author

Ihab F. Ilyas is a professor in the Cheriton School of Computer Science and the NSERC-Thomson Reuters Research Chair on data quality at the University ofWaterloo. His main research focuses on the areas of big data and database systems, with special interest in data quality and integration, managing uncertain data, rank-aware query processing, and information extraction. Ihab is also a co-founder of Tamr, a startup focusing on largescale data integration and cleaning. He is a recipient of the Ontario Early Researcher Award (2009), a Cheriton Faculty Fellowship (2013), an NSERC Discovery Accelerator Award (2014), and a Google Faculty Award (2014), and he is an ACM Distinguished Scientist. Ihab is an elected member of the VLDB Endowment board of trustees, elected SIGMOD vice chair, and an associate editor of the ACM Transactions of Database Systems (TODS). He holds a Ph.D. in Computer Science from Purdue University, West Lafayette.
Xu Chu is a tenure-track assistant professor in the School of Computer Science at Georgia Institute of Technology. He obtained his Ph.D. from the University of Waterloo in 2017. His research interests resolve around two themes: using data management technologies to make machine learning more usable, and using machine learning to tackle hard data management problems such as data integration. He won the Microsoft Research Ph.D. Fellowship in 2015. He also received the Cheriton Fellowship from the University of Waterloo, 2013–2015.

Table of Contents

  • Preface
  • Figure and Table Credits
  • Introduction
  • Outlier Detection
  • Data Deduplication
  • Data Transformation
  • Data Quality Rule Definition and Discovery
  • Rule-Based Data Cleaning
  • Machine Learning and Probabilistic Data Cleaning
  • Conclusion and Future Thoughts
  • References
  • Index
  • Author Biographies
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