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RESIDUALS

Residuals (Error) The difference between the observed y and the predicted y Observed Y – Predicted Y Determines the effectiveness of the regression

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Page 1: Residuals (Error)  The difference between the observed y and the predicted y Observed Y – Predicted Y  Determines the effectiveness of the regression

RESIDUALS

Page 2: Residuals (Error)  The difference between the observed y and the predicted y Observed Y – Predicted Y  Determines the effectiveness of the regression

Residuals (Error)

The difference between the observed y and the predicted y

Observed Y – Predicted Y

Determines the effectiveness of the regression model

Given to you in the chart Get by plugging into the equation

Page 3: Residuals (Error)  The difference between the observed y and the predicted y Observed Y – Predicted Y  Determines the effectiveness of the regression

Residual Plots Determine

If the model is appropriate, then the plot will have a random scatter.

If another model is necessary, the plot will have a noticeable pattern.

Pattern = Problem!

Page 4: Residuals (Error)  The difference between the observed y and the predicted y Observed Y – Predicted Y  Determines the effectiveness of the regression

Linear model appropriate or inappropriate?

Page 5: Residuals (Error)  The difference between the observed y and the predicted y Observed Y – Predicted Y  Determines the effectiveness of the regression

The only way to know is to see the residual plot.

1. Does there appear to be a pattern in the residual plot?Yes, this shape is

called a quadratic.2. Does this

support your original guess?You must now

see that a linear model does NOT fit this data. Not scattered!

Page 6: Residuals (Error)  The difference between the observed y and the predicted y Observed Y – Predicted Y  Determines the effectiveness of the regression

Linear model appropriate or inappropriate?

Page 7: Residuals (Error)  The difference between the observed y and the predicted y Observed Y – Predicted Y  Determines the effectiveness of the regression

The only way to know is to see the residual plot.

1. Does their appear to be a pattern in the residual plot?Yes, it fans out

as x increases.2. Does this support your original guess?

You must now see that a linear model does NOT fit this data. Fan Pattern.

Page 8: Residuals (Error)  The difference between the observed y and the predicted y Observed Y – Predicted Y  Determines the effectiveness of the regression

Linear model appropriate or inappropriate?

Page 9: Residuals (Error)  The difference between the observed y and the predicted y Observed Y – Predicted Y  Determines the effectiveness of the regression

The only way to know is to see the residual plot.

1. Does their appear to be a pattern in the residual plot?Yes, it looks quadratic.

2. Does this support your original guess?

This was very tricky. The scale was very small. You must now see that a linear model does NOT fit this data.

Page 10: Residuals (Error)  The difference between the observed y and the predicted y Observed Y – Predicted Y  Determines the effectiveness of the regression

Linear model appropriate or inappropriate?

Page 11: Residuals (Error)  The difference between the observed y and the predicted y Observed Y – Predicted Y  Determines the effectiveness of the regression

The only way to know is to see the residual plot.

1. Does their appear to be a pattern in the residual plot?Yes, it seems to decrease as x increases.2. Does this support your original guess?This was tricky.

You must now see that a linear model does NOT fit this data.

Page 12: Residuals (Error)  The difference between the observed y and the predicted y Observed Y – Predicted Y  Determines the effectiveness of the regression

Example 1: Calculate Residualfrom this data set:

X Y PredictedResiduals(observed – predicted)

1 4

2 12

3 18

4 23

5 24

6 28

4.6 2.07y x

=

===

=6.67 -2.67

Page 13: Residuals (Error)  The difference between the observed y and the predicted y Observed Y – Predicted Y  Determines the effectiveness of the regression

Example 1: Calculate Residualfrom this data set:

X Y PredictedResiduals(observed – predicted)

1 4 6.67 -2.67

2 12 11.27

3 18 15.87

4 23 20.47

5 24 25.07

6 28 29.67

4.6 2.07y x

=

===

=

Page 14: Residuals (Error)  The difference between the observed y and the predicted y Observed Y – Predicted Y  Determines the effectiveness of the regression

Good fit or not? Is there a Pattern?

0 1 2 3 4 5 6 7

-3

-2

-1

0

1

2

3

There is no pattern. This makes this line a good fit.

Page 15: Residuals (Error)  The difference between the observed y and the predicted y Observed Y – Predicted Y  Determines the effectiveness of the regression

Example 2: Calculate ResidualTracking Cell Phone Use over 10 days

Total Time (minutes)

Total Distance

(miles

Predicted Total

Distance

Residuals(observed – predicted)

32 51 54.4 -3.4

19 30 31.9

28 47

36 56

17 27

23 35

41 65

22 41

37 73

28 54

1.73 0.96y x

=========

=

Page 16: Residuals (Error)  The difference between the observed y and the predicted y Observed Y – Predicted Y  Determines the effectiveness of the regression

Example: Calculate ResidualTracking Cell Phone Use over 10 days

Total Time (minutes)

Total Distance (miles)

Predicted Total Distance

Residuals(observed – predicted)

32 51 54.4 -3.4

19 30 31.9 -1.928 47 47.5 -0.536 56 61.3 -5.317 27 28.5 -1.523 35 38.8 -3.841 65 70.0 -522 41 37.1 3.937 73 63.1 9.928 54 47.5 6.5

1.73 0.96y x

Page 17: Residuals (Error)  The difference between the observed y and the predicted y Observed Y – Predicted Y  Determines the effectiveness of the regression

Good fit or not? Is there a Pattern?

15 20 25 30 35 40 45

-8

-6

-4

-2

0

2

4

6

8

10

12

The plots begin to fan out in a “U” shape, so it is not a great fitting line.

YES, I THINK THIS STUFF IS HARD TOO!

Page 18: Residuals (Error)  The difference between the observed y and the predicted y Observed Y – Predicted Y  Determines the effectiveness of the regression

HOMEWORK :RESIDUALSWORKSHEET

We will go over this tomorrow in detail, I promise