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Regression Models for Data Science in R: Statistical inference for data science.

✍ Scribed by YASSINE MOUSAIF


Publisher
UNKNOWN
Year
2022
Tongue
English
Category
Library

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✦ Synopsis


What's Special about this Book:
The ideal reader for this book will be quantitatively literate and has a basic understanding of statistical concepts and R programming. The student should have a basic understanding of statistical inference such as contained in "Statistical inference for data science". The book gives a rigorous treatment of the elementary concepts of regression models from a practical perspective. After reading the book and watching the associated videos, students will be able to perform multivariable regression models and understand their interpretations.


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