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- Title: Introduction to Statistical Thinking
- Author(s) Benjamin Yakir
- Publisher: The Hebrew University of Jerusalem (2019); eBook (Creative Commons Licensed)
- License(s): Creative Commons License (CC)
- Paperback: N/A
- eBook: HTML and PDF (380 pages)
- Language: English
- ISBN-10: N/A
- ISBN-13: N/A
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The target audience for this book is college students who are required to learn statistics, students with little background in mathematics and often no motivation to learn more. It is assumed that the students do have basic skills in using computers and have access to one. Moreover, it is assumed that the students are willing to actively follow the discussion in the text, to practice, and more importantly, to think.
About the Authors- Benjamin Yakir is a Professor of Statistics at The Hebrew University of Jerusalem.
- Statistics and Mathematical Statistics
- The R Programming Language
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- Introduction to Statistical Thinking (Benjamin Yakir)
- The Mirror Site (1) - PDF
- The Mirror Site (2) - PDF
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