Loose Leaf for Statistical Techniques in Business and Economics (Mcgraw-hill/Irwin Series in Operations and Decision Sciences)
Loose Leaf for Statistical Techniques in Business and Economics (Mcgraw-hill/Irwin Series in Operations and Decision Sciences)
16th Edition
ISBN: 9780077639709
Author: Douglas A. Lind, William G Marchal, Samuel A. Wathen
Publisher: McGraw-Hill Education
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Chapter 18, Problem 31CE

Blueberry Farms Golf and Fish Club of Hilton Head, South Carolina, wants to find monthly seasonal indexes for package play, nonpackage play, and total play. The package play refers to golfers who visit the area as part of a golf package. Typically, the greens fees, cart fees, lodging, maid service, and meals are included as part of a golfing package. The course earns a certain percentage of this total. The nonpackage play includes play by local residents and visitors to the area who wish to play golf. The following data, beginning with July 2010 and ending with June 2013, report the package and nonpackage play by month, as well as the total amount, in thousands of dollars.

Chapter 18, Problem 31CE, Blueberry Farms Golf and Fish Club of Hilton Head, South Carolina, wants to find monthly seasonal Using statistical software:

  1. a. Develop a seasonal index for each month for the package sales. What do you note about the various months?
  2. b. Develop a seasonal index for each month for the nonpackage sales. What do you note about the various months?
  3. c. Develop a seasonal index for each month for the total sales. What do you note about the various months?
  4. d. Compare the indexes for package sales, nonpackage sales, and total sales. Are the busiest months the same?

a.

Expert Solution
Check Mark
To determine

Provide a seasonal index for each month for the package sales.

Write a note about the seasonal index for package sales of various months.

Answer to Problem 31CE

The seasonal indexes for each month for the package sales are given below:

PeriodMonthSeasonal Index
1July0.19792
2August0.25663
3September0.8784
4October2.10481
5November0.77747
6December0.18388
7January0.26874
8February0.63189
9March1.67943
10April2.73547
11May1.67903
12June0.60633

The two months, October and April signify more than twice the average.

Explanation of Solution

Twelve months moving average:

Twelve-year moving average=sum of the twelve concequent packages12.

Centered moving average:

Centered moving average=sum of the two concequent moving averages2.

Specific seasonal index:

Specific seasonal index=packagesCentered moving average

Some preliminary calculations are given below:

YearQuarterPackage

Four-quarter

moving average

Centered

Moving average

Specific seasonal
2010July18.36
August28.62
September101.34
October182.7
November54.72
December36.36
2011January25.2100.3050.25123
February67.5100.39599.98250.67512
March179.37100.21599.791251.79745
April267.6699.75101.56882.63526
May179.7399.8325103.741.73250
June63.18103.305103.58250.60995
July16.2104.175103.2150.15695
August23.04102.99103.2750.22309
September102.33103.44102.62250.99715
October224.37103.11103.48132.16822
November65.16102.135104.57250.62311
December22.14104.8275104.39250.21209
2012January30.6104.3175104.85750.29183
February63.54104.4675105.5850.60179
March167.67105.2475105.03751.59629
April299.97105.9225103.70632.89249
May173.61104.1525104.55751.66042
June64.98103.26105.60750.61529
July25.56105.855105.18750.24299
August31.14105.36105.37880.29551
September81.09105.015104.24250.77789
October213.66105.7425102.46882.08512
November96.3102.7425101.58380.94799
December16.2102.195101.57250.15949
2013January26.46100.9725
February72.27102.1725
March131.67109.1373
April293.4116.937
May158.94120.92
June79.38109.3275

The monthly indexes are as follows:

 2010201120122013Means
Jan-0.251230.29183-0.27153
Feb-0.675120.60179-0.63845
Mar-1.797451.59629-1.69687
April-2.635262.89249-2.76388
May-1.73251.66042-1.69647
June-0.609950.61529-0.61262
July-0.156950.24299-0.19997
August-0.223090.29551-0.25929
Sep-0.997150.7778-0.88752
Oct-2.168222.0851-2.12667
Nov-0.62310.9479-0.78555
Dec-0.212080.1594-0.18579
Total    12.1246233

Seasonal index:

Seasonal Index=Mean of the Month×Correction Factor

Here, Correction Factor=12Sum of the means of the months.

Therefore, the following is obtained:

Correction Factor=1212.1246233=0.98972147

The seasonal indexes are as follows:

 2010201120122013MeansSeasonal Index
Jan-0.251230.29183-0.271530.268738257
Feb-0.675120.60179-0.638450.631891717
Mar-1.797451.59629-1.696871.679428286
April-2.635262.89249-2.763882.735469498
May-1.73251.66042-1.696471.679028041
June-0.609950.61529-0.612620.606326037
July-0.156950.24299-0.199970.19791885
August-0.223090.29551-0.259290.256634371
Sep-0.997150.7778-0.887520.87840128
Oct-2.168222.0851-2.126672.104812143
Nov-0.62310.9479-0.785550.777473047
Dec-0.212080.1594-0.185790.183878466

The seasonal index for October is 2.10481 and the seasonal index for April is 2.73547. That is, the months October and April represent more than twice the average when compared to other months.

b.

Expert Solution
Check Mark
To determine

Create a seasonal index for each month for the non-package sales.

Write a note on seasonal index for the non-package sales for various months.

Answer to Problem 31CE

The seasonal index for each month for the non-package sales are as follows:

PeriodMonthSeasonal Index
1July1.73270
2August1.53389
3September0.94145
4October1.29183
5November0.66928
6December0.52991
7January0.23673
8February0.69732
9March1.00695
10April1.13226
11May0.98282
12June1.24486

The two months, December and January have the low index values.

Explanation of Solution

The specific seasonal indices are as follows:

YearQuarterLocal ($)

Four-quarter

moving average

Centered

Moving average

Specific seasonal
2010July43.44
August56.76
September34.44
October38.4
November44.88
December12.24
2011January9.3636.0750.259459
February25.834.6438.320.673278
March34.4437.5139.4850.87223
April34.3239.1340.380.849926
May40.839.8440.1151.017076
June40.840.9239.4651.033827
July77.8839.3139.6251.965426
August76.239.6239.8451.912411
September42.9639.6340.611.057868
October51.3640.0642.2051.216917
November25.5641.1643.240.591119
December15.9643.2544.1950.361127
2012January9.4843.2344.7150.212009
February30.9645.1643.270.715507
March47.6444.2742.041.133206
April59.442.2742.2751.405086
May40.5641.8143.1350.940304
June63.9642.7444.251.445424
July67.243.5345.241.485411
August52.244.9745.691.142482
September37.4445.5145.820.81711
October62.5245.8746.111.355888
November35.0445.7747.2350.741823
December33.2446.4547.880.694236
2013January15.9648.02
February35.2847.74
March46.4445.97091
April67.5645.348
May59.446.22667
June60.644.19

The monthly indexes are as follows:

 2010201120122013Means
Jan-0.251230.29183-0.235734
Feb-0.675120.60179-0.694392
Mar-1.797451.59629-1.002718
April-2.635262.89249-1.127506
May-1.73251.66042-0.97869
June-0.609950.61529-1.239626
July-0.156950.24299-1.725419
August-0.223090.29551-1.527446
Sep-0.997150.7778-0.937489
Oct-2.168222.0851-1.286403
Nov-0.62310.9479-0.666471
Dec-0.212080.1594-0.527681
Total    11.94958

The Correction Factor=12Sum of the means of the months.

Therefore, the following is obtained:

Correction Factor=1211.94958=1.00422

The seasonal indexes are as follows:

 2010201120122013MeansSeasonal Index
Jan-0.251230.29183-0.2357340.23673
Feb-0.675120.60179-0.6943920.69732
Mar-1.797451.59629-1.0027181.00695
April-2.635262.89249-1.1275061.13226
May-1.73251.66042-0.978690.98282
June-0.609950.61529-1.2396261.24486
July-0.156950.24299-1.7254191.73270
August-0.223090.29551-1.5274461.53389
Sep-0.997150.7778-0.9374890.94145
Oct-2.168222.0851-1.2864031.29183
Nov-0.62310.9479-0.6664710.66928
Dec-0.212080.1594-0.5276810.52991

The seasonal index for December is 0.52991 and the seasonal index for January is 0.23673. That is, the months December and January represent the less index values when compared to other months.

c.

Expert Solution
Check Mark
To determine

Create a seasonal index for each month for the total sales.

Write a note on various months.

Answer to Problem 31CE

The seasonal indexes for each month for the total sales are as follows:

PeriodMonthSeasonal Index
1July0.63371
2August0.61870
3September0.89655
4October1.86415
5November0.74353
6December0.29180
7January0.25908
8February0.65069
9March1.49028
10April2.28041
11May1.48235
12June0.78876

The two months December and January have the low index values.

The two months April and October have the high index values.

Explanation of Solution

The specific seasonal indices are as follows:

YearQuarterLocal ($)

Four-quarter

moving average

Centered

Moving average

Specific seasonal
2010July61.8
August85.38
September135.78
October221.1
November99.6
December48.6
2011January34.56136.380.270833
February93.3135.035138.30250.276527
March213.81137.725139.27630.161078
April301.98138.88141.94880.11365
May220.53139.6725143.8550.185009
June103.98144.225143.04750.392383
July94.08143.485142.840.827806
August99.24142.61143.120.767836
September145.29143.07143.23250.295684
October275.73143.17145.68630.186269
November90.72143.295147.81250.281746
December38.1148.0775148.58750.418898
2012January40.08147.5475149.57250.236527
February94.5149.6275148.8550.327619
March215.31149.5175147.07750.221262
April359.37148.1925145.98130.165289
May214.17145.9625147.69250.189382
June128.94146149.85750.496045
July92.76149.385150.42750.72445
August83.34150.33151.06880.62635
September118.53150.525150.06250.315869
October276.18151.6125148.57880.226374
November131.34148.5125148.81880.266788
December49.44148.645149.45250.67233
2013January42.42148.9925  
February107.55149.9125
March178.11155.1082
April360.96162.285
May218.34167.1467
June139.98153.5175

The monthly indexes are given below:

 2010201120122013Means
Jan-0.253410.267964-0.260687
Feb-0.6746080.634846-0.654727
Mar-1.535151.463922-1.499536
April-2.1273882.461755-2.294571
May-1.5330021.450107-1.491555
June-0.7268910.860417-0.793654
July-0.6586390.616643-0.637641
August-0.6934040.551669-0.622537
Sep-1.0143650.789871-0.902118
Oct-1.8926291.858812-1.875721
Nov-0.6137510.88255-0.74815
Dec-0.2564150.330807-0.293611
Total    0.993829

The Correction Factor=12Sum of the means of the months

Therefore, the following is obtained:

Correction Factor=1212.07451=0.993829

The seasonal indexes are given below:

 2010201120122013MeansSeasonal Index
Jan-0.253410.2679640.2606870.25908
Feb-0.6746080.6348460.6547270.65069
Mar-1.535151.4639221.4995361.49028
April-2.1273882.4617552.2945712.28041
May-1.5330021.4501071.4915551.48235
June-0.7268910.8604170.7936540.78876
July-0.6586390.6166430.6376410.63371
August-0.6934040.5516690.6225370.61870
Sep-1.0143650.7898710.9021180.89655
Oct-1.8926291.8588121.8757211.86415
Nov-0.6137510.882550.748150.74353
Dec-0.2564150.3308070.2936110.29180

The seasonal index for January is 0.25908 and the seasonal index for December is 0.29180. That is, the months December and January represent the less index values when compared to other months. The seasonal index for April is 2.28041 and the seasonal index for October is 1.86415. That is, the months April and October represent the more index values when compared to other months.

d.

Expert Solution
Check Mark
To determine

Compare the indexes for package sales, non-package sales, and total sales.

Explain whether the busiest months are all the same.

Explanation of Solution

The seasonal index for April in package play is large when compared to remaining months. Hence, the package play is the highest in April.

The seasonal index for July in non-package is large when compared to the remaining months. Hence, the non-package play is the highest play in July. From the given information, 70% of the total sales come from package play. Hence, the total play is very similar to package play.

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Chapter 18 Solutions

Loose Leaf for Statistical Techniques in Business and Economics (Mcgraw-hill/Irwin Series in Operations and Decision Sciences)

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