Question

You were asked by your manager to evaluate the regression tables below to decide which cost driver would be best to use...

You were asked by your manager to evaluate the regression tables below to decide which cost driver would be best to use for the production department. Since your manager is new and does not understand the regression analysis tables, you will need to explain why one set of statistics is better than the other and why you have chosen the better driver.  

Manufacturing Direct Labor Hours
Regression Statistics
Multiple R 0.799304258
R Square 0.638887297
Adjusted R Square 0.602776026
Standard Error 937.1853461
Observations 12
ANOVA
df SS MS F Significance F
Regression 1 15539336.27 15539336 17.69218558 0.001810776
Residual 10 8783163.73 878316.4
Total 11 24322500
Coefficients Standard Error t Stat P-value
Intercept 1532.330232 2190.385348 0.699571 0.500144187
OH Costs 0.038428034 0.009136028 4.206208 0.001810776
Manufacturing Machine Hours
Regression Statistics
Multiple R 0.868515979
R Square 0.754320006
Adjusted R Square 0.727022228
Standard Error 29.94755517
Observations 11
ANOVA
df SS MS F Significance F
Regression 1 24782.84091 24782.84 27.63302 0.000523013
Residual 9 8071.704545 896.8561
Total 10 32854.54545
Coefficients Standard Error t Stat P-value
Intercept 114.6704545 88.29220603 1.298761 0.226313
Units 0.053068182 0.010095319 5.256712 0.000523
0 0
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Answer #1

The regression in 2nd table "Manufacturing Machine Hours" is better than regression in 1st table "Manufacturing Direct Labor Hours" because of below reasons

1) the correlation coefficient (Multiple R) is larger, and R Square is 0.754320006 in 2nd regression analysis which means 75% variation is explained by the model by 2nd regression analysis, where as R Square is 0.638887297 in 1st regression analysis i.e. only 63% variation is explained by the model.

2) The global F test (ANOVA table), Significance F is smaller in 2nd regression analysis

3) P-value is smaller for tests for slope (0.000523 for 2nd regression analysis)

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