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Using R With Multivariate Statistics
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  • Title: Using R With Multivariate Statistics
  • Author(s) Randall E. Schumacker
  • Publisher: SAGE Publications, Inc; 1st edition (July 21, 2015); eBook (Online Edition)
  • Paperback: 408 pages
  • eBook: HTML
  • Language: English
  • ISBN-10: 1483377962
  • ISBN-13: 978-1483377964
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Book Description

This book is a quick guide to using R, free-access software available for Windows and Mac operating systems that allows users to customize statistical analysis. It provides data analysis examples, R code, computer output, and explanation of results for every multivariate statistical application included.

About the Authors
  • Dr. Randall E. Schumacker is professor of educational research at the University of Alabama.
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