Normal view MARC view ISBD view

Entity Information Life Cycle for Big Data : Master Data Management and Information Integration

By: Talburt, John R.
Contributor(s): Zhou, Yinle.
Material type: TextTextSeries: eBooks on Demand.Publisher: Saint Louis : Elsevier Science, 2015Description: 1 online resource (255 p.).ISBN: 9780128006658.Subject(s): Big data | Data mining | Pattern recognition systems | Semantic WebGenre/Form: Electronic books.Additional physical formats: Print version:: Entity Information Life Cycle for Big Data : Master Data Management and Information IntegrationDDC classification: 005.7 LOC classification: HD30.215 -- .T353 2015ebOnline resources: Click here to view this ebook.
Contents:
Front Cover; Entity Information Life Cycle for Big Data; Copyright; Contents; Foreword; Preface; THE CHANGING LANDSCAPE OF INFORMATION QUALITY; MOTIVATION FOR THIS BOOK; AUDIENCE; ORGANIZATION OF THE MATERIAL; Acknowledgements; Chapter 1 - The Value Proposition for MDM and Big Data; DEFINITION AND COMPONENTS OF MDM; THE BUSINESS CASE FOR MDM; DIMENSIONS OF MDM; THE CHALLENGE OF BIG DATA; MDM AND BIG DATA - THE N-SQUARED PROBLEM; CONCLUDING REMARKS; Chapter 2 - Entity Identity Information and the CSRUD Life Cycle Model; ENTITIES AND ENTITY REFERENCES; MANAGING ENTITY IDENTITY INFORMATION
ENTITY IDENTITY INFORMATION LIFE CYCLE MANAGEMENT MODELSCONCLUDING REMARKS; Chapter 3 - A Deep Dive into the Capture Phase; AN OVERVIEW OF THE CAPTURE PHASE; BUILDING THE FOUNDATION; UNDERSTANDING THE DATA; DATA PREPARATION; SELECTING IDENTITY ATTRIBUTES; ASSESSING ER RESULTS; DATA MATCHING STRATEGIES; CONCLUDING REMARKS; Chapter 4 - Store and Share - Entity Identity Structures; ENTITY IDENTITY INFORMATION MANAGEMENT STRATEGIES; DEDICATED MDM SYSTEMS; THE IDENTITY KNOWLEDGE BASE; MDM ARCHITECTURES; CONCLUDING REMARKS; Chapter 5 - Update and Dispose Phases - Ongoing Data Stewardship
DATA STEWARDSHIPTHE AUTOMATED UPDATE PROCESS; THE MANUAL UPDATE PROCESS; ASSERTED RESOLUTION; EIS VISUALIZATION TOOLS; MANAGING ENTITY IDENTIFIERS; CONCLUDING REMARKS; Chapter 6 - Resolve and Retrieve Phase - Identity Resolution; IDENTITY RESOLUTION; IDENTITY RESOLUTION ACCESS MODES; CONFIDENCE SCORES; CONCLUDING REMARKS; Chapter 7 - Theoretical Foundations; THE FELLEGI-SUNTER THEORY OF RECORD LINKAGE; THE STANFORD ENTITY RESOLUTION FRAMEWORK; ENTITY IDENTITY INFORMATION MANAGEMENT; CONCLUDING REMARKS; Chapter 8 - The Nuts and Bolts of Entity Resolution; THE ER CHECKLIST
CLUSTER-TO-CLUSTER CLASSIFICATIONSELECTING AN APPROPRIATE ALGORITHM; CONCLUDING REMARKS; Chapter 9 - Blocking; BLOCKING; BLOCKING BY MATCH KEY; DYNAMIC BLOCKING VERSUS PRERESOLUTION BLOCKING; BLOCKING PRECISION AND RECALL; MATCH KEY BLOCKING FOR BOOLEAN RULES; MATCH KEY BLOCKING FOR SCORING RULES; CONCLUDING REMARKS; Chapter 10 - CSRUD for Big Data; LARGE-SCALE ER FOR MDM; THE TRANSITIVE CLOSURE PROBLEM; DISTRIBUTED, MULTIPLE-INDEX, RECORD-BASED RESOLUTION; AN ITERATIVE, NONRECURSIVE ALGORITHM FOR TRANSITIVE CLOSURE; ITERATION PHASE: SUCCESSIVE CLOSURE BY REFERENCE IDENTIFIER
DEDUPLICATION PHASE: FINAL OUTPUT OF COMPONENTSER USING THE NULL RULE; THE CAPTURE PHASE AND IKB; THE IDENTITY UPDATE PROBLEM; PERSISTENT ENTITY IDENTIFIERS; THE LARGE COMPONENT AND BIG ENTITY PROBLEMS; IDENTITY CAPTURE AND UPDATE FOR ATTRIBUTE-BASED RESOLUTION; CONCLUDING REMARKS; Chapter 11 - ISO Data Quality Standards for Master Data; BACKGROUND; GOALS AND SCOPE OF THE ISO 8000-110 STANDARD; FOUR MAJOR COMPONENTS OF THE ISO 8000-110 STANDARD; SIMPLE AND STRONG COMPLIANCE WITH ISO 8000-110; ISO 22745 INDUSTRIAL SYSTEMS AND INTEGRATION; BEYOND ISO 8000-110; CONCLUDING REMARKS
Appendix A - Some Commonly Used ER Comparators
Summary: <i> Entity Information Life Cycle for Big Data </i>walks you through the ins and outs of managing entity information so you can successfully achieve master data management (MDM) in the era of big data. This book explains big data's impact on MDM and the critical role of entity information management system (EIMS) in successful MDM. Expert authors Dr. John R. Talburt and Dr. Yinle Zhou provide a thorough background in the principles of managing the entity information life cycle and provide practical tips and techniques for implementing an EIMS, strategies for exploiting distributed processing
Tags from this library: No tags from this library for this title. Log in to add tags.
Item type Current location Call number URL Status Date due Barcode
Electronic Book UT Tyler Online
Online
HD30.215 -- .T353 2015eb (Browse shelf) http://uttyler.eblib.com/patron/FullRecord.aspx?p=2030661 Available EBL2030661
Browsing UT Tyler Online Shelves , Shelving location: Online Close shelf browser
HD30.213 R583 2013 The Transverse Information Systems : HD30.215 -- .A383 2015 Advanced Business Analytics. HD30.215 -- .M67 2015eb Big Data and Analytics : HD30.215 -- .T353 2015eb Entity Information Life Cycle for Big Data : HD30.215.B345 2017 Business Analytics. HD30.215 B347 2014 Analytics in a Big Data World : HD30.215 .H34 2014 Bayesian Methods for Management and Business :

Front Cover; Entity Information Life Cycle for Big Data; Copyright; Contents; Foreword; Preface; THE CHANGING LANDSCAPE OF INFORMATION QUALITY; MOTIVATION FOR THIS BOOK; AUDIENCE; ORGANIZATION OF THE MATERIAL; Acknowledgements; Chapter 1 - The Value Proposition for MDM and Big Data; DEFINITION AND COMPONENTS OF MDM; THE BUSINESS CASE FOR MDM; DIMENSIONS OF MDM; THE CHALLENGE OF BIG DATA; MDM AND BIG DATA - THE N-SQUARED PROBLEM; CONCLUDING REMARKS; Chapter 2 - Entity Identity Information and the CSRUD Life Cycle Model; ENTITIES AND ENTITY REFERENCES; MANAGING ENTITY IDENTITY INFORMATION

ENTITY IDENTITY INFORMATION LIFE CYCLE MANAGEMENT MODELSCONCLUDING REMARKS; Chapter 3 - A Deep Dive into the Capture Phase; AN OVERVIEW OF THE CAPTURE PHASE; BUILDING THE FOUNDATION; UNDERSTANDING THE DATA; DATA PREPARATION; SELECTING IDENTITY ATTRIBUTES; ASSESSING ER RESULTS; DATA MATCHING STRATEGIES; CONCLUDING REMARKS; Chapter 4 - Store and Share - Entity Identity Structures; ENTITY IDENTITY INFORMATION MANAGEMENT STRATEGIES; DEDICATED MDM SYSTEMS; THE IDENTITY KNOWLEDGE BASE; MDM ARCHITECTURES; CONCLUDING REMARKS; Chapter 5 - Update and Dispose Phases - Ongoing Data Stewardship

DATA STEWARDSHIPTHE AUTOMATED UPDATE PROCESS; THE MANUAL UPDATE PROCESS; ASSERTED RESOLUTION; EIS VISUALIZATION TOOLS; MANAGING ENTITY IDENTIFIERS; CONCLUDING REMARKS; Chapter 6 - Resolve and Retrieve Phase - Identity Resolution; IDENTITY RESOLUTION; IDENTITY RESOLUTION ACCESS MODES; CONFIDENCE SCORES; CONCLUDING REMARKS; Chapter 7 - Theoretical Foundations; THE FELLEGI-SUNTER THEORY OF RECORD LINKAGE; THE STANFORD ENTITY RESOLUTION FRAMEWORK; ENTITY IDENTITY INFORMATION MANAGEMENT; CONCLUDING REMARKS; Chapter 8 - The Nuts and Bolts of Entity Resolution; THE ER CHECKLIST

CLUSTER-TO-CLUSTER CLASSIFICATIONSELECTING AN APPROPRIATE ALGORITHM; CONCLUDING REMARKS; Chapter 9 - Blocking; BLOCKING; BLOCKING BY MATCH KEY; DYNAMIC BLOCKING VERSUS PRERESOLUTION BLOCKING; BLOCKING PRECISION AND RECALL; MATCH KEY BLOCKING FOR BOOLEAN RULES; MATCH KEY BLOCKING FOR SCORING RULES; CONCLUDING REMARKS; Chapter 10 - CSRUD for Big Data; LARGE-SCALE ER FOR MDM; THE TRANSITIVE CLOSURE PROBLEM; DISTRIBUTED, MULTIPLE-INDEX, RECORD-BASED RESOLUTION; AN ITERATIVE, NONRECURSIVE ALGORITHM FOR TRANSITIVE CLOSURE; ITERATION PHASE: SUCCESSIVE CLOSURE BY REFERENCE IDENTIFIER

DEDUPLICATION PHASE: FINAL OUTPUT OF COMPONENTSER USING THE NULL RULE; THE CAPTURE PHASE AND IKB; THE IDENTITY UPDATE PROBLEM; PERSISTENT ENTITY IDENTIFIERS; THE LARGE COMPONENT AND BIG ENTITY PROBLEMS; IDENTITY CAPTURE AND UPDATE FOR ATTRIBUTE-BASED RESOLUTION; CONCLUDING REMARKS; Chapter 11 - ISO Data Quality Standards for Master Data; BACKGROUND; GOALS AND SCOPE OF THE ISO 8000-110 STANDARD; FOUR MAJOR COMPONENTS OF THE ISO 8000-110 STANDARD; SIMPLE AND STRONG COMPLIANCE WITH ISO 8000-110; ISO 22745 INDUSTRIAL SYSTEMS AND INTEGRATION; BEYOND ISO 8000-110; CONCLUDING REMARKS

Appendix A - Some Commonly Used ER Comparators

<i> Entity Information Life Cycle for Big Data </i>walks you through the ins and outs of managing entity information so you can successfully achieve master data management (MDM) in the era of big data. This book explains big data's impact on MDM and the critical role of entity information management system (EIMS) in successful MDM. Expert authors Dr. John R. Talburt and Dr. Yinle Zhou provide a thorough background in the principles of managing the entity information life cycle and provide practical tips and techniques for implementing an EIMS, strategies for exploiting distributed processing

Description based upon print version of record.

There are no comments for this item.

Log in to your account to post a comment.