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- Title: Learning Statistics with Jamovi: A Tutorial for Beginners in Statistical Analysis
- Contributor(s) Danielle Navarro, David Foxcroft
- Publisher: Open Book Publishers (January 15, 2025); eBook (Creative Commons Licensed)
- License(s): Creative Commons License (CC)
- Hardcover/Paperback: 492 pages
- eBook: PDF and Read Online
- Language: English, French, Spanish, Japanese
- ISBN-10: 1800649371
- ISBN-13: 978-1800649378
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Covers the analysis of contingency tables, t-tests, correlation, regression, ANOVA and factor analysis, while also giving students a firm grounding in descriptive statistics and graphing. It includes learning aids for applying statistical principles using the Jamovi interface, as well as embedded data files to accompany the book, and comprehensive chapters on probability theory, sampling and estimation, and null hypothesis testing.
About the Authors- Professor of Community Psychology and Public Health University Lead for Research Improvement and Integrity at Oxford Brookes University
- Statistics, Mathematical Statistics
- Probability and Stochastic Process
- Data Analysis and Data Mining Books
- Applied Mathematics

- Learning Statistics with Jamovi: A Tutorial for Beginners in Statistical Analysis
- The Mirror Site (1) - PDF
- Book Homepage (Read Online, Data Files, etc.)
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