STATISTICAL TECHNIQUES FOR BUSINESS AND
STATISTICAL TECHNIQUES FOR BUSINESS AND
17th Edition
ISBN: 9781307261158
Author: Lind
Publisher: MCG/CREATE
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Chapter 18, Problem 16E

a.

To determine

Plot the residuals in the order in which the data are presented.

a.

Expert Solution
Check Mark

Answer to Problem 16E

The plot for the ordered residuals is,

STATISTICAL TECHNIQUES FOR BUSINESS AND, Chapter 18, Problem 16E , additional homework tip  1

Explanation of Solution

Calculation:

Linear Trend Equation:

Step-by-step procedure to obtain the regression using the Excel:

  • Enter the data for Commissions, Calls and Driven in Excel sheet.
  • Go to Data Menu.
  • Click on Data Analysis.
  • Select ‘Regression’ and click on ‘OK’
  • Select the column of Commissions under ‘Input Y Range’.
  • Select the column of Calls and Driven under ‘Input X Range’.
  • Click on ‘OK’.

Output for the Regression obtained using the Excel is as follows:

STATISTICAL TECHNIQUES FOR BUSINESS AND, Chapter 18, Problem 16E , additional homework tip  2

From the Excel output, the regression equation is y^=101.32+0.63Calls+0.02Driven.

Residual:

Formula for residual is Residual=Actual valuePredicted value.

Commissionsy^Residual=yy^
2233.67-11.67
1326.36-13.36
3344.02-11.02
3855.16-17.16
2333.92-10.92
4757.12-10.12
2947.9-18.9
3853.09-15.09
4146.24-5.24
3235.6-3.6
2026.15-6.15
1329.37-16.37
4759.92-12.92
3856.46-18.46
4451.46-7.46
2933.73-4.73
3845.22-7.22
3756.73-19.73
1426.95-12.95
3446.36-12.36
2535.64-10.64
2740.5-13.5
2532.11-7.11
4355.46-12.46
3447.87-13.87

Step-by-step procedure to obtain the plot for Residuals using the Excel:

  • Enter the data for Residuals in Excel sheet.
  • Select the column of ‘Residuals’.
  • Go to Insert Menu.
  • Select line chart.

b.

To determine

Test the autocorrelation at the 0.01 significance level.

b.

Expert Solution
Check Mark

Answer to Problem 16E

There is a positive autocorrelation among the residuals at the 0.01 significance level.

Explanation of Solution

Calculation:

Hypotheses are defined below:

Null Hypothesis:

H0: There is no autocorrelation among the residuals.

Alternative Hypothesis:

H1: There is a positive residual autocorrelation.

Test Statistic:

The Durbin-Watson statistic for testing the hypothesis is,

d=t=2n(etet1)2t=1n(et)2

yy^et=yy^Lagged Residual, et1(etet1)2et2
2233.67–11.67  136.189
1326.36–13.36–11.672.8561178.49
3344.02–11.02–13.365.4756121.44
3855.16–17.16–11.0237.6996294.466
2333.92–10.92–17.1638.9376119.246
4757.12–10.12–10.920.64102.414
2947.9–18.9–10.1277.0884357.21
3853.09–15.09–18.914.5161227.708
4146.24–5.24–15.0997.022527.4576
3235.6–3.6–5.242.689612.96
2026.15–6.15–3.66.502537.8225
1329.37–16.37–6.15104.448267.977
4759.92–12.92–16.3711.9025166.926
3856.46–18.46–12.9230.6916340.772
4451.46–7.46–18.4612155.6516
2933.73–4.73–7.467.452922.3729
3845.22–7.22–4.736.200152.1284
3756.73–19.73–7.22156.5389.273
1426.95–12.95–19.7345.9684167.703
3446.36–12.36–12.950.3481152.77
2535.64–10.64–12.362.9584113.21
2740.5–13.5–10.648.1796182.25
2532.11–7.11–13.540.832150.5521
4355.46–12.46–7.1128.6225155.252
3447.87–13.87–12.461.9881192.377
    (etet1)2=850.521et2=3,924.62

The test statistic is,

d=t=2n(etet1)2t=1n(et)2=850.5213,924.62=0.22

Thus, the Durbin-Watson statistic is 0.22.

Critical value:

From the given information table, there are two independent variables. That is, k=2.

The level of significance is 0.01 and the sample size is 25.

From the Table Appendix B.9C, for k=2 and n=25, The value of dL is 0.98 and the value of dU is 1.30.

Rejection Rule:

  • If d<dL, then reject the null hypothesis.
  • If d>dU, then do not reject the null hypothesis.
  • If dL<d<dU, provide inconclusive results.

Conclusion:

The value of d is 0.22, which is less than 0.98.

That is, d(=0.22)<dL(=0.98).

From the rejection rule, reject the null hypothesis.

It can be concluded that there is a positive autocorrelation among the residuals.

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