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Introductory R: A Beginner's Guide to Data Visualisation, Statistical Analysis and Programming in R

✍ Scribed by Knell, Robert J


Publisher
Rob Knell School of Biological and Chemical Sciences Queen Mary University of London
Year
2014;2013
Tongue
English
Edition
Revised and expanded edition
Category
Library

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✦ Subjects


R (Computer program language);Statistics--Data processing;Electronic books;Statistics -- Data processing


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