Budget Analysis: A budget is an expression of management's expectations and goals concerning
future revenues and costs. To increase their effectiveness, many budgets are flexible, including
allowances for the effect of variation in uncontrolled variables. For example, the costs and
revenues of many production plants are greatly affected by the number of units produced by the
plant during the budget period, and this may be beyond a plant manager's control. Standard cost-
accounting procedures can be used to adjust the direct-cost parts of the budget for the level of
production, but it is often more difficult to handle overhead. In many cases, statistical methods are
used to predict or forecast overhead from the level of production using historical data.
As a simple example, consider the historical data for a certain plant. Enter the data into EXCEL
and analyze it to answer the following items.
(a) Construct a scatterplot of y versus x.
(b) State the model equation.
a. PRODUCTION = + OVERHEAD
0 1
b. OVERHEAD = PRODUCTION
1
c. PRODUCTION = OVERHEAD1
d. PRODUCTION = + OVERHEAD
1 0
e. OVERHEAD = + PRODUCTION
0 1
f. OVERHEAD = + PRODUCTION
1 0
In the model equation above, what does OVERHEAD represent?
a. The predicted value of the predictor variable
b. The predicted value of the explanatory variable
c. The predicted value of the response variable
d. The predicted value of the independent variable
In the model equation above, what does represent?
0
a. The model intercept
b. The response variable
c. The explanatory variable
d. The slope associated with the explanatory variable
In the model equation above, what does represent?
1
a. The slope associated with the explanatory variable
b. The response variable
c. The model intercept
d. The explanatory variable
In the model equation above, what is the x-variable?
a. The response variable PRODUCTION
b. The explanatory variable OVERHEAD
c. The explanatory variable PRODUCTION
d. The response variable OVERHEAD
Provide the sample-based estimates for the model parameters. (Round your answers to three
decimal places.)
= _____ +________ x
(c) Graph the regression line on the scatterplot.
(d) Use the model to predict the overhead cost associated with the production of 50,000 units.
(Round your answer to two decimal places.)
$ _______
The actual overhead cost was $13,000 when 50,000 units were produced (See the raw data
above). Calculate the residual. (Round your answer to two decimal places.)
$ _______
Interpret the residual you calculated immediately above by mentally inserting the ABSOLUTE
VALUE of the residual into the blanks below.
a. When using this model to make predictions, we expect to be _______ units closer to the true
value, on average.
b. Our prediction was _______ units higher than the actual overhead cost when 50,000 units were
produced. Our prediction was an underestimate.
c. Our prediction was _______ units lower than the actual overhead cost when 50,000 units were
produced. Our prediction was an ov.
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Budget Analysis A budget is an expression of managements e.pdf
1. Budget Analysis: A budget is an expression of management's expectations and goals concerning
future revenues and costs. To increase their effectiveness, many budgets are flexible, including
allowances for the effect of variation in uncontrolled variables. For example, the costs and
revenues of many production plants are greatly affected by the number of units produced by the
plant during the budget period, and this may be beyond a plant manager's control. Standard cost-
accounting procedures can be used to adjust the direct-cost parts of the budget for the level of
production, but it is often more difficult to handle overhead. In many cases, statistical methods are
used to predict or forecast overhead from the level of production using historical data.
As a simple example, consider the historical data for a certain plant. Enter the data into EXCEL
and analyze it to answer the following items.
(a) Construct a scatterplot of y versus x.
(b) State the model equation.
a. PRODUCTION =
0
+
1
OVERHEAD
b. OVERHEAD =
1
PRODUCTION
c. PRODUCTION =
1
OVERHEAD
d. PRODUCTION =
1
+
0
OVERHEAD
e. OVERHEAD =
0
+
1
PRODUCTION
f. OVERHEAD =
1
+
0
PRODUCTION
In the model equation above, what does OVERHEAD represent?
a. The predicted value of the predictor variable
b. The predicted value of the explanatory variable
c. The predicted value of the response variable
d. The predicted value of the independent variable
In the model equation above, what does
0
represent?
a. The model intercept
b. The response variable
c. The explanatory variable
d. The slope associated with the explanatory variable
In the model equation above, what does
1
represent?
a. The slope associated with the explanatory variable
b. The response variable
c. The model intercept
d. The explanatory variable
In the model equation above, what is the x-variable?
2. a. The response variable PRODUCTION
b. The explanatory variable OVERHEAD
c. The explanatory variable PRODUCTION
d. The response variable OVERHEAD
Provide the sample-based estimates for the model parameters. (Round your answers to three
decimal places.)
= _____ +________ x
(c) Graph the regression line on the scatterplot.
(d) Use the model to predict the overhead cost associated with the production of 50,000 units.
(Round your answer to two decimal places.)
$ _______
The actual overhead cost was $13,000 when 50,000 units were produced (See the raw data
above). Calculate the residual. (Round your answer to two decimal places.)
$ _______
Interpret the residual you calculated immediately above by mentally inserting the ABSOLUTE
VALUE of the residual into the blanks below.
a. When using this model to make predictions, we expect to be _______ units closer to the true
value, on average.
b. Our prediction was _______ units higher than the actual overhead cost when 50,000 units were
produced. Our prediction was an underestimate.
c. Our prediction was _______ units lower than the actual overhead cost when 50,000 units were
produced. Our prediction was an overestimate.
d. Our prediction was _______ units higher than the actual overhead cost when 50,000 units were
produced. Our prediction was an overestimate.
e. Our prediction was _______ units lower than the actual overhead cost when 50,000 units were
produced. Our prediction was an underestimate.
f. When using this model to make predictions, we expect to be off by _______ units, on average.
(e) Use the model to predict the overhead cost associated with the production of 100,000 units.
(Round your answer to five decimal places.)
_________thousands of dollars
The actual overhead cost was $15,100 when 100,000 units were produced (See the raw data
above). Calculate the residual. (Round your answer to five decimal places.)
________thousands of dollars
Interpret the residual you calculated immediately above by mentally inserting the ABSOLUTE
VALUE of the residual into the blanks below.
a. Our prediction was _______ units higher than the actual overhead cost when 50,000 units were
produced. Our prediction was an underestimate.
b. When using this model to make predictions, we expect to be off by _______ units, on average.
c. When using this model to make predictions, we expect to be _______ units closer to the true
3. value, on average.
d. Our prediction was _______ units higher than the actual overhead cost when 100,000 units
were produced. Our prediction was an overestimate.
e. Our prediction was _______ units lower than the actual overhead cost when 100,000 units were
produced. Our prediction was an underestimate.
f. Our prediction was _______ units lower than the actual overhead cost when 50,000 units were
produced. Our prediction was an overestimate.
Production
(in 10,000)
units:
5 6 7 8 9 10 11
Overhead
costs (in
$1,000):
13 11.6 14 15 15.7 15.1 17.5