HFIT-565

Assessment & Evaluation of Health Fitness Parameters

 

Fall Semester 2009

Dr. Marc Schaeffer

mschaef@american.edu

 

Lecture Notes Class #6

Thursday October 1, 2009

Go to Course Syllabus


Topics for Discussion

Lecture #5

Lecture #7


Review of correlation & introduction to regression

While we can make inferences with correlation, correlation does not imply causation

 

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Regression is frequently used for the purpose of prediction.

 

Regression based on the equation for a straight line

y = b + mx

 

where:

b = the y-axis intercept, when X = 0

m = the slope of the line (DY/DX)

rise = the change in Y (D Y)

run = the change in X (D X)

slope = rise ÷ run

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the graph of this line appears as follows

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For statistical purposes, the predicted value of Y can be displayed with a little different appearance than the equation for a straight line above

 

Let's solve an example (click here to go to the Excel solution)

 

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The difference between B1 and b1 requires explanation

 

Regression toward the mean

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Regression variability

A real problem

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Where do we start?

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Have you seen the Excel regression output links for examples above?

 

Assignment #6, Due prior to class 10/08

Text Reading

Additional Problems

Solutions to problems

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Go to Lecture #7----->

<------ Go to Lecture #5

Go to Course Syllabus

 

 

send email to Dr. Schaeffer

 

 

 

 

this page last modified by M Schaeffer
on September 24, 2009