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AP Statistics Section 3.2 A Regression Lines. Linear relationships between two quantitative variables are quite common. Correlation measures the direction.

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Presentation on theme: "AP Statistics Section 3.2 A Regression Lines. Linear relationships between two quantitative variables are quite common. Correlation measures the direction."— Presentation transcript:

1 AP Statistics Section 3.2 A Regression Lines

2 Linear relationships between two quantitative variables are quite common. Correlation measures the direction and strength of these relationships. Just as we drew a density curve to model the data in a histogram, we can summarize the overall pattern in a linear relationship by drawing a _______________ on the scatterplot. regression line

3 Note that regression requires that we have an explanatory variable and a response variable. A regression line is often used to predict the value of y for a given value of x.

4 Who:______________________________ What:______________________________ ______________________________ Why:_______________________________ When, where, how and by whom? The data come from a controlled experiment in which subjects were forced to overeat for an 8-week period. Results of the study were published in Science magazine in 1999. 16 healthy young adults Exp.-change in NEA (cal) Resp.-fat gain (kg) Do changes in NEA explain weight gain

5 NEA (calories) F a t G a i n (kg) -100 0 100 200 300 400 500 600 700 8642086420

6 NEA (calories) F a t G a i n (kg) -100 0 100 200 300 400 500 600 700 8642086420

7 Numerical summary: The correlation between NEA change and fat gain is r = _______

8 A least-squares regression line relating y to x has an equation of the form ___________ In this equation, b is the _____, and a is the __________. slope y-intercept

9 The formula at the right will allow you to find the value of b:

10 Once you have computed b, you can then find the value of a using this equation.

11 We can also find these values on our TI-83/84.

12 For this example, the LSL is or

13 Interpreting b: The slope b is the predicted _____________ in the response variable y as the explanatory variable x changes. rate of change

14 The slope b = -.0034 tells us that fat gain goes down by.0034 kg for each additional calorie of NEA.

15 You cannot say how important a relationship is by looking at how big the regression slope is.

16 Interpreting a: The y-intercept a = 3.505 kg is the fat gain estimated by the model if NEA does not change when a person overeats.

17 Model: Using the equation above, draw the LSL on your scatterplot.

18 NEA (calories) F a t G a i n (kg) -100 0 100 200 300 400 500 600 700 8642086420

19 TI 83/84 8:LinReg(a+bx) GRAPH

20 Prediction: Predict the fat gain for an individual whose NEA increases by 400 cal by: (a) using the graph ___________ (b) using the equation _________

21 NEA (calories) F a t G a i n (kg) -100 0 100 200 300 400 500 600 700 8642086420

22 Prediction: Predict the fat gain for an individual whose NEA increases by 400 cal by: (a) using the graph ___________ (b) using the equation _________

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25 Predict the fat gain for an individual whose NEA increases by 1500 cal.

26 So we are predicting that this individual loses fat when he/she overeats. What went wrong? 1500 is way outside the range of NEA values in our data

27 Extrapolation is the use of a regression line for prediction outside the range of values of the explanatory variable x used to obtain the line. Such predictions are often not accurate.

28 abab


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