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a. compute the three sums of squares, SST,SSR,SSE, using the defining formulas

b. verify the regression identity,SST=SSR+SSE

c. compute the coefficient of determination.

d. determine the percentage of variation in the observed values of the response variable that is required by the regression

e. State how useful the regression equation appears to be for making predictions.

y^=14-3x

Short Answer

Expert verified

(a) SST=104SSR=54SSE=50

(b) SST=104

(c) 0.5192

(d) 51.92%

(e) Utilising the regression equation to generate predictions is useless, because the regression can only explain 52%of the variation.

Step by step solution

01

Part (a) Step 1: Given information

The given data is

y^=14-3x

02

Part (a) Step 2: Explanation

The regression equation is

y^=14-3x

The formulas to calculate the sum of squares is

SST=yi-y¯2SST=y^i-y¯2SST=yi-y^2

As shown in the table below, the relevant sums can be determined.

SSR=104SSR=54SSE=50

03

Part (b) Step 1: Given information

The given data is

y^=14-3x

04

Part (b) Step 2: Explanation

SST=SSE+SSE

=54+50=104

05

Part (c) Step 1: Given information

The given data is

y^=14-3x

06

Part (c) Step 2: Explanation

The coefficient of determination is

r2=SSRSST

=54104=0.5192

07

Part (d) Step 1: Given information

The given data is

y^=14-3x

08

Part (d) Step 2: Explanation

The coefficient of determination restated as a percentage is the percentage of variation:

0.5192=51.92%.

09

Part (e) Step 1: Given information

The given data is

y^=14-3x

10

Part (e) Step 2: Explanation

The regression equation can be used to generate predictions if the estimated r2is near to 1.

The estimated r2value is 0.5192, which is not equal to 1.

As a result, utilising the regression equation to generate predictions is useless, because the regression can only explain 52%of the variation.

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