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📚 Introduction to Modern Statistics - A college-level open-source textbook with a modern approach highlighting multivariable relationships and simulation-based inference. For v1, see https://openintro-ims.netlify.app.

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Introduction to Modern Statistics

Where is IMS 2?

https://openintro-ims.netlify.app/

Where did IMS 1 go?

https://openintro-ims1.netlify.app/

Where did Introduction to Statistics with Randomization and Simulation go?

As we're working on the 2nd edition of this book, we realized that we weren't too enamoured by the name, and decided to rename the book to "Introduction to Modern Statistics" to better reflect the content covered in the book, which features simulation-based inference but also many non-inference topics!

If you're looking for the source files for the 1st edition of OpenIntro - Introduction to Statistics with Randomization and Simulation, please download the zipped release here.


Please note that this project is released with a Contributor Code of Conduct. By participating in this project you agree to abide by its terms.


Conventions

used in IMS:

dataset (one word)
data frame (two words)
Type I error
box plot (two words)

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📚 Introduction to Modern Statistics - A college-level open-source textbook with a modern approach highlighting multivariable relationships and simulation-based inference. For v1, see https://openintro-ims.netlify.app.

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