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Practical Regression and Anova Using R
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  • Title: Practical Regression and Anova Using R
  • Author(s) Julian J. Faraway
  • Publisher: CRAN and GitHub
  • Hardcover/Paperback: N/A
  • eBook: PDF
  • Language: English
  • ISBN-10/ASIN: N/A
  • ISBN-13: N/A
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Book Description

The emphasis of this book is on the practice of regression and analysis of variance. The objective is to learn what methods are available and more importantly, when they should be applied.

About the Authors
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