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One Variable Statistics with R Studio Computer Programming
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Description

This is a Unit on Variable Statistics using the free computer programming language R Studio. The unit features 8 lessons, 2 quizzes, and one test.

Each lesson has a student google document, a teacher lesson plan, a google slides with help videos for each lesson, and R Studio Code for the lesson.

The lessons cover and introduction to R Studio Programming, Data Types, Numeric Data Visualizations, Outliers, Shapes of Distributions, Spreads of Distibutions, Standard Deviation, and Comparing Data Sets.

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One Variable Statistics with R Studio Computer Programming

Andrew Witczak
3 Followers
$39.99

Highlights

Digital downloads
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Grades
7th - 12th
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Standards

Description

This is a Unit on Variable Statistics using the free computer programming language R Studio. The unit features 8 lessons, 2 quizzes, and one test.

Each lesson has a student google document, a teacher lesson plan, a google slides with help videos for each lesson, and R Studio Code for the lesson.

The lessons cover and introduction to R Studio Programming, Data Types, Numeric Data Visualizations, Outliers, Shapes of Distributions, Spreads of Distibutions, Standard Deviation, and Comparing Data Sets.

Report this resource to TPT
Reported resources will be reviewed by our team. Report this resource to let us know if this resource violates TPT's content guidelines.

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Standards

to see state-specific standards (only available in the US).
Represent data with plots on the real number line (dot plots, histograms, and box plots).
Use statistics appropriate to the shape of the data distribution to compare center (median, mean) and spread (interquartile range, standard deviation) of two or more different data sets.
Interpret differences in shape, center, and spread in the context of the data sets, accounting for possible effects of extreme data points (outliers).
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