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Mathematics
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AP®︎/College Statistics (K-A)
>>
Exploring two-variable quantitative data (K-A)
>>
Analyzing departures from linearity (K-A)
Analyzing departures from linearity (K-A)
(7 Lectures Available)
S#
Lecture
Course
Institute
Instructor
Discipline
1
Impact of removing outliers on regression lines (K-A)
Analyzing departures from linearity (K-A)
Khan Academy
Basic and Health Sciences
2
Influential points in regression (K-A)
Analyzing departures from linearity (K-A)
Khan Academy
Basic and Health Sciences
3
Interpreting computer regression data (K-A)
Analyzing departures from linearity (K-A)
Khan Academy
Basic and Health Sciences
4
R-squared or coefficient of determination (K-A)
Analyzing departures from linearity (K-A)
Khan Academy
Basic and Health Sciences
5
Standard deviation of residuals or root mean square deviation (RMSD) (K-A)
Analyzing departures from linearity (K-A)
Khan Academy
Basic and Health Sciences
6
Transforming nonlinear data (K-A)
Analyzing departures from linearity (K-A)
Khan Academy
Basic and Health Sciences
7
Worked example of linear regression using transformed data (K-A)
Analyzing departures from linearity (K-A)
Khan Academy
Basic and Health Sciences
Basic and Health Sciences
Biology
Chemistry
Mathematics
Physics
Medicine
Test Prep
Applied Sciences
Agricultural Science
Computer Science
Earth, Atmospheric, and Planetary Sciences
Energy
Engineering
Healthcare
Social Sciences
Business and Finance
Economics
English
History
Arts and Humanities
Law
Literature and Linguistics
Management
Marketing
Mass Communication
Philosophy
Physical Education
Political Science
Psychology
Sociology