Handbook of statistical analysis and data mining applications / Robert Nisbet, John Elder, Gary Miner.
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Item type | Current library | Collection | Call number | Copy number | Status | Date due | Barcode | Item holds |
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Dr. S. R. Lasker Library, EWU E-book | Non-fiction | 006.312 NIH 2009 (Browse shelf(Opens below)) | Not for loan | ||||
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Dr. S. R. Lasker Library, EWU Reserve Section | Non-fiction | 006.312 NIH 2009 (Browse shelf(Opens below)) | C-1 | Not For Loan | 27474 | ||
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Dr. S. R. Lasker Library, EWU Audio Visual | Non-fiction | 006.312 NIH 2009 (Browse shelf(Opens below)) | C-1 | Available | CD-1518 | ||
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Dr. S. R. Lasker Library, EWU Circulation Section | Non-fiction | 006.312 NIH 2009 (Browse shelf(Opens below)) | C-2 | Available | 28172 |
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006.312 AZD 2012 Data analysis and data mining : | 006.312 CLA 2013 Classification and data mining / | 006.312 HAD 2012 Data mining : | 006.312 NIH 2009 Handbook of statistical analysis and data mining applications / | 006.37 SZC 2011 Computer vision : | 006.4 DUP 2006 Pattern classification / | 006.42 GOD 2002 Digital image processing / |
Includes bibliographical references and index.
TOC History of phases of data analysis, basic theory, and the data mining process -- The algorithms in data mining and text mining, the organization of the three most common data mining tools, and selected specialized areas using data mining -- Tutorials--step-by-step case studies as a starting point to learn how to do data mining analyses -- Measuring true complexity, the "right model for the right use," top mistakes, and the future of analytics.
Guides business analysts, scientists, engineers and researchers through all stages of data analysis, model building and implementation. This book helps one discern the technical and business problem, understand the strengths and weaknesses of modern data mining algorithms, and employ the right statistical methods for practical application.
AS
Sagar Shahanawaz
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