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Two Variable Statistics with Python
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Description

This is a Unit on Two Variable Variable Statistics using the free computer programming language Python. The unit features 6 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 Python Code for the lesson.

The lessons covers two way tables, relative frequency tables, associations with categorical data, scatterplots and lines of best fit, fitting linear models, and residuals.

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Two Variable Statistics with Python

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 Two Variable Variable Statistics using the free computer programming language Python. The unit features 6 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 Python Code for the lesson.

The lessons covers two way tables, relative frequency tables, associations with categorical data, scatterplots and lines of best fit, fitting linear models, and residuals.

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).
Summarize categorical data for two categories in two-way frequency tables. Interpret relative frequencies in the context of the data (including joint, marginal, and conditional relative frequencies). Recognize possible associations and trends in the data.
Represent data on two quantitative variables on a scatter plot, and describe how the variables are related.
Fit a function to the data; use functions fitted to data to solve problems in the context of the data.
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