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 Title: Discovering Statistics Using R
 Author(s) Andy Field, Jeremy Miles, Zoe Field
 Publisher: SAGE Publications Ltd; 1st edition; eBook (Internet Archive Edition)
 Hardcover/Paperback: 992 pages
 eBook: PDF and ePub
 Language: English
 ISBN10: 1446200469
 ISBN13: 9781446200469
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Book Description
This book takes readers on a journey of statistical discovery using the freeware R. This book is written in an irreverent style and follows the same ground breaking structure and pedagogical approach. The core material is enhanced by a cast of characters to help the reader on their way, hundreds of examples, self assessment tests to consolidate knowledge, and additional website material for those wanting to learn more.
About the Authors Andy Field is Professor of Quantitative Methods at the University of Sussex.
 Statistics, Mathematical Statistics
 The R Programming Language
 Data Analysis and Data Mining Books
 Probability and Stochastic Process
 Discovering Statistics Using R (Andy Field, et al.)
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