Neas-Seminars

Regression, Student Project: Intuition, Residual Plots


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By NEAS - 2/13/2006 9:22:14 AM

Regression Analysis, Project Template, Residual Plots

Intuition: Residual Plots

(The attached PDF file has better formatting.)

Updated: February 13, 2006

Jacob: Can you show how to use residual plots to see if the slope parameter β is constant?

Rachel: Suppose we have 20 pairs of values for X and Y:

X

Y

X

Y

X

Y

X

Y

10

18

17

28

22

33

25

33

10

19

18

29

22

32

25

31

11

22

20

29

24

31

28

33

14

23

20

31

25

32

29

33

15

25

21

31

25

32

30

34

Ordinary least squares estimation gives

= 13.671, with a standard error of 1.427 and a t statistic of 9.58

= 0.74351, with a standard error of 0.06666 and a t statistic of 11.15

 

Both coefficients have p-values of zero. The R2 is 87.4% and the adjusted R2 is 86.7%. The regression equation seems fine.

But the residual plots shows the relation is not linear. We use residual plots of the residual vs X and the residual vs the fitted value of Y. In both plots, the residuals look like a carot: v.

Jacob: What does that indicate?

Rachel: The slope of the residual line is first positive and then negative. This means that the estimated β is too low for low values of X and too high for high values of X.