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© The McGraw-Hill Companies, Inc., 200313.1McGraw-Hill/Irwin
Table of ContentsChapter 13 (Forecasting)
Some Applications of Forecasting (Section 13.1) 13.2–13.4A Case Study: The Computer Club Warehouse Problem (Section 13.2) 13.5–13.9Applying Time-Series Forecasting to the Case Study (Section 13.3) 13.10–13.26Time-Series Forecasting with CB Predictor (Section 13.4) 13.27–13.34The Time-Series Forecasting Methods in Perspective (Section 13.5) 13.35–13.39Causal Forecasting with Linear Regression (Section 13.6) 13.40–13.44Judgmental Forecasting Methods (Section 13.7) 13.45Forecasting in Practice (Section 13.8) 13.46–13.47
© The McGraw-Hill Companies, Inc., 200313.2McGraw-Hill/Irwin
Some Applications of Forecasting
• Sales Forecasting– Any company engaged in selling goods needs to forecast demand for those goods.
– Underestimating demand leads to shortages, lost sales, unhappy customers, etc.
– Overestimating demand is costly due to inventory costs, forced price reductions, unneeded production, etc.
– Examples: Merit Brass Company (1993), Hidroeléctrica Español (1990), American Airlines (1992).
• Forecasting Economic Trends– How much will the nation’s gross domestic product grow next quarter? Next year?
What is the forecast for the rate of inflation? Unemployment?– Statistical models to forecast economic trends (econometric models) have been
developed by government agencies, universities, consulting firms, etc.– Models can be very influential in determining govermental policies.– Example: U.S. Department of Labor (1988).
All articles can be downloaded at www.mhhe.com/hillier2e/articles
© The McGraw-Hill Companies, Inc., 200313.3McGraw-Hill/Irwin
Some Applications of Forecasting
• Forecasting Production Yields– The yield of a production process refers to the percentage of completed items that
meet quality standards and do not need to be discarded.– If an expensive setup is required, or there is only one production run, an accurate
forecast is necessary to provide a good chance of fulfilling an order with acceptable items without excessive production costs.
– Example: Albuquerque Microelectronics Operation (1994)
• Forecasting the Need for Spare Parts– Many companies need to maintain an inventory of spare parts to enable them to
repair either their equipment or their products leased or sold to customers.– Example: American Airlines (1989).
• Forecasting Staffing Needs– For a service company, forecasting “sales” becomes forecasting demand for
services, which translates into forecasting staffing needs.– Too few staff leads to long lines, unhappy customers, perhaps lost business. Too
many increases personnel cost.– Examples: United Airlines (1986), Taco Bell (1998), L. L Bean (1995).
All articles can be downloaded at www.mhhe.com/hillier2e/articles
© The McGraw-Hill Companies, Inc., 200313.4McGraw-Hill/Irwin
Applications of Statistical Forecasting Methods
Organization Quantity Being Forecasted Issue of Interfaces
Merit Brass Co. Sales of finished goods Jan-Feb 1993
Hidroelétrica Español Energy demand Jan-Feb 1990
American Airlines Demand for different fare classes Jan-Feb 1992
American AirlinesNeed for spare parts to repair airplanes
July-Aug 1989
Albuquerque Microelectronics
Production yield in wafer fabrication Mar-Apr 1994
U.S. Department of Labor Unemployment insurance payments Mar-Apr 1988
United AirlinesDemand at reservations offices and airports
Jan-Feb 1986
Taco Bell Number of customer arrivals Jan-Feb 1988
L.L. Bean Staffing needs at call center Nov-Dec 1995
All references available for download at www.mhhe.com/hillier2e/articles
© The McGraw-Hill Companies, Inc., 200313.5McGraw-Hill/Irwin
The Computer Club Warehouse (CCW)
• The Computer Club Warehouse (CCW) sells computer products at bargain prices by taking telephone orders (as well as website and fax orders) directly from customers.
• Products include computers, peripherals, supplies, software, and computer furniture.
• The CCW call center is never closed. It is staffed by dozens of agents to take and process customer orders.
• A large number of telephone trunks are provided for incoming calls. If an agent is not free when a call arrives, it is placed on hold. If all the trunks are in use (called saturation), the call receives a busy signal.
• An accurate forecast of the demand for agents is needed.
Question: How should the demand for agents be forecasted?
© The McGraw-Hill Companies, Inc., 200313.6McGraw-Hill/Irwin
25 Percent Rule (Current Forecasting Method)
Since sales are relatively stable through the year except for a substantial increase during the Christmas season, assume that each quarter’s call volume will be the same as the preceding quarter, except for adding 25 percent for Quarter 4.
Forecast for Quarter 2 = Call volume for Quarter 1
Forecast for Quarter 3 = Call volume for Quarter 2
Forecast for Quarter 4 = 1.25(Call volume for Quarter 3)
Forecast for next Quarter 1 = (Call volume for Quarter 4) / 1.25
© The McGraw-Hill Companies, Inc., 200313.7McGraw-Hill/Irwin
Average Daily Call Volume (3 Years of Data)
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A B C D E
CCW's Average Daily Call Volume
Year Quarter Call Volume1 1 6,8091 2 6,4651 3 6,5691 4 8,2662 1 7,2572 2 7,0642 3 7,7842 4 8,7243 1 6,9923 2 6,8223 3 7,9493 4 9,650
© The McGraw-Hill Companies, Inc., 200313.8McGraw-Hill/Irwin
Applying the 25-Percent Rule
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A B C D E F G H I
Current Forecasting Method for CCW's Average Daily Call Volume
ForecastingYear Quarter Data Forecast Error Mean Absolute Deviation
1 1 6,809 MAD = 4241 2 6,465 6,809 3441 3 6,569 6,465 104 Mean Square Error1 4 8,266 8,211 55 MSE = 317,8152 1 7,257 6,613 6442 2 7,064 7,257 1932 3 7,784 7,064 7202 4 8,724 9,730 1,0063 1 6,992 6,979 133 2 6,822 6,992 1703 3 7,949 6,822 1,1273 4 9,650 9,936 2864 1 7,7204 24 34 4
© The McGraw-Hill Companies, Inc., 200313.9McGraw-Hill/Irwin
Measuring the Forecast Error
• The mean absolute deviation (called MAD) measures the average forecasting error.
MAD = (Sum of forecasting errors) / (Number of forecasts)
• The mean square error (often abbreviated MSE) measures the average of the square of the forecasting error.
MSE = (Sum of square of forecasting errors) / (Number of forecasts).
• The MSE increases the weight of large errors relative to the weight of small errors.
© The McGraw-Hill Companies, Inc., 200313.10McGraw-Hill/Irwin
Considering Seasonal Effects
• When there are seasonal patterns in the data, they can be addressed by forecasting methods that use seasonal factors.
• The seasonal factor for any period of a year (a quarter, a month, etc.) measures how that period compares to the overall average for an entire year.
Seasonal factor = (Average for the period) / (Overall average)
• It is easier to analyze data and detect new trends if the data are first adjusted to remove the seasonal patterns.
Seasonally adjusted data = (Actual call volume) / (Seasonal factor)
© The McGraw-Hill Companies, Inc., 200313.11McGraw-Hill/Irwin
Calculation of Seasonal Factors for CCW
QuarterThree-Year
AverageSeasonalFactor
1 7,019 7,019 / 7,529 = 0.93
2 6,784 6,784 / 7,529 = 0.90
3 7,434 7,434 / 7,529 = 0.99
4 8,880 8,880 / 7,529 = 1.18
Total = 30,117
Average = 30,117 / 4 = 7,529
© The McGraw-Hill Companies, Inc., 200313.12McGraw-Hill/Irwin
Excel Template for Calculating Seasonal Factors
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A B C D E F G
Estimating Seasonal Factors for CCW
True Year Quarter Value Type of Seasonality
1 1 6,809 Quarterly1 2 6,4651 3 6,5691 4 8,266 Estimate for2 1 7,257 Quarter Seasonal Factor2 2 7,064 1 0.93232 3 7,784 2 0.90102 4 8,724 3 0.98733 1 6,992 4 1.17943 2 6,8223 3 7,9493 4 9,650
© The McGraw-Hill Companies, Inc., 200313.13McGraw-Hill/Irwin
Seasonally Adjusted Time Series for CCW
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A B C D E F
Seasonally Adjusted Time Series for CCW
Seasonal Actual Seasonally AdjustedYear Quarter Factor Call Volume Call Volume
1 1 0.93 6,809 7,3221 2 0.90 6,465 7,1831 3 0.99 6,569 6,6351 4 1.18 8,266 7,0052 1 0.93 7,257 7,8032 2 0.90 7,064 7,8492 3 0.99 7,784 7,8632 4 1.18 8,724 7,3933 1 0.93 6,992 7,5183 2 0.90 6,822 7,5803 3 0.99 7,949 8,0293 4 1.18 9,650 8,178
© The McGraw-Hill Companies, Inc., 200313.14McGraw-Hill/Irwin
Outline for Forecasting Call Volume
1. Select a time-series forecasting method.
2. Apply this method to the seasonally adjusted time series to obtain a forecast of the seasonally adjusted call volume for the next time period.
3. Multiply this forecast by the corresponding seasonal factor to obtain a forecast of the actual call volume (without seasonal adjustment).
© The McGraw-Hill Companies, Inc., 200313.15McGraw-Hill/Irwin
The Last-Value Forecasting Method
• The last-value forecasting method ignores all data points in a time series except the last one.
Forecast = Last value
• The last-value forecasting method is sometimes called the naïve method, because statisticians consider it naïve to use just a sample size of one when other data are available.
• However, when conditions are changing rapidly, it may be that the last value is the only relevant data point.
© The McGraw-Hill Companies, Inc., 200313.16McGraw-Hill/Irwin
The Last-Value Method Applied to CCW’s Problem
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A B C D E F G H I J K
Last-Value Forecasting Method with Seasonality for CCW
Seasonally Seasonally True Adjusted Adjusted Actual Forecasting
Year Quarter Value Value Forecast Forecast Error Type of Seasonality1 1 6,809 7,322 Quarterly1 2 6,465 7,183 7,322 6,589 1241 3 6,569 6,635 7,183 7,112 543 Quarter Seasonal Factor1 4 8,266 7,005 6,635 7,830 436 1 0.932 1 7,257 7,803 7,005 6,515 742 2 0.902 2 7,064 7,849 7,803 7,023 41 3 0.992 3 7,784 7,863 7,849 7,770 14 4 1.182 4 8,724 7,393 7,863 9,278 5543 1 6,992 7,518 7,393 6,876 1163 2 6,822 7,580 7,518 6,766 563 3 7,949 8,029 7,580 7,504 4453 4 9,650 8,178 8,029 9,475 1754 1 8,178 7,6064 24 34 45 1 Mean Absolute Deviation5 2 MAD = 2955 35 4 Mean Square Error6 1 MSE = 145,909
© The McGraw-Hill Companies, Inc., 200313.17McGraw-Hill/Irwin
The Averaging Forecasting Method
• The averaging forecasting method uses all the data points in the time series and simply averages these points.
Forecast = Average of all data to date
• The averaging forecasting method is a good one to use when conditions are very stable.
• However, the averaging method is very slow to respond to changing conditions. It places the same weight on all the data, even though the older values may be less representative of current conditions than the last value observed.
© The McGraw-Hill Companies, Inc., 200313.18McGraw-Hill/Irwin
The Averaging Method Applied to CCW’s Problem
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A B C D E F G H I J K
Averaging Forecasting Method with Seasonality for CCW
Seasonally Seasonally True Adjusted Adjusted Actual Forecasting
Year Quarter Value Value Forecast Forecast Error Type of Seasonality1 1 6,809 7,322 Quarterly1 2 6,465 7,183 7,322 6,589 1241 3 6,569 6,635 7,252 7,180 611 Quarter Seasonal Factor1 4 8,266 7,005 7,047 8,315 49 1 0.932 1 7,257 7,803 7,036 6,544 713 2 0.902 2 7,064 7,849 7,190 6,471 593 3 0.992 3 7,784 7,863 7,300 7,227 557 4 1.182 4 8,724 7,393 7,380 8,708 163 1 6,992 7,518 7,382 6,865 1273 2 6,822 7,580 7,397 6,657 1653 3 7,949 8,029 7,415 7,341 6083 4 9,650 8,178 7,471 8,816 8344 1 7,530 7,0034 24 34 45 1 Mean Absolute Deviation5 2 MAD = 4005 35 4 Mean Square Error6 1 MSE = 242,876
© The McGraw-Hill Companies, Inc., 200313.19McGraw-Hill/Irwin
The Moving-Average Forecasting Method
• The moving-average forecasting method averages the data for only the most recent time periods.
n = Number of recent periods to consider as relevant for forecasting
Forecast = Average of last n values
• The moving-average forecasting method is a good one to use when conditions don’t change much over the number of time periods included in the average.
• However, the moving-average method is slow to respond to changing conditions. It places the same weight on each of the last n values even though the older values may be less representative of current conditions than the last value observed.
© The McGraw-Hill Companies, Inc., 200313.20McGraw-Hill/Irwin
The Moving-Average Method Applied to CCW
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A B C D E F G H I J K
Moving Average Forecasting Method with Seasonality for CCW
Seasonally Seasonally True Adjusted Adjusted Actual Forecasting Number of previous
Year Quarter Value Value Forecast Forecast Error periods to consider1 1 6,809 7,322 n = 41 2 6,465 7,1831 3 6,569 6,635 Type of Seasonality1 4 8,266 7,005 Quarterly2 1 7,257 7,803 7,036 6,544 7132 2 7,064 7,849 7,157 6,441 623 Quarter Seasonal Factor2 3 7,784 7,863 7,323 7,250 534 1 0.932 4 8,724 7,393 7,630 9,003 279 2 0.903 1 6,992 7,518 7,727 7,186 194 3 0.993 2 6,822 7,580 7,656 6,890 68 4 1.183 3 7,949 8,029 7,589 7,513 4363 4 9,650 8,178 7,630 9,004 6464 1 7,826 7,2794 24 34 45 15 25 35 4 Mean Absolute Deviation6 1 MAD = 4376 26 3 Mean Square Error6 4 MSE = 238,816
© The McGraw-Hill Companies, Inc., 200313.21McGraw-Hill/Irwin
The Exponential Smoothing Forecasting Method
• The exponential smoothing forecasting method places the greatest weight on the last value in the time series and then progressively smaller weights on the older values.
Forecast = (Last value) + (1 – ) (Last forecast)
is the smoothing constant between 0 and 1.
• This method places a weight of a on the last value, (1–) on the next-to-last value, (1–)2 on the next prior value, etc.
– For example, when = 0.5, the method places a weight of 0.5 on the last value, 0.25 on the next-to-last, 0.125 on the next prior, etc.
– A larger value of places more emphasis on the more recent values, a smaller value places more emphasis on the older values.
• The choice of the value of the smoothing constant a has a substantial effect on the forecast.
– A small value (say, = 0.1) is appropriate if conditions are relatively stable.
– A larger value (say, = 0.5) is appropriate if significant changes occur frequently.
© The McGraw-Hill Companies, Inc., 200313.22McGraw-Hill/Irwin
The Exponential Smoothing Method Applied to CCW
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A B C D E F G H I J K
Exponential-Smoothing Forecasting Method with Seasonality for CCW
Seasonally Seasonally True Adjusted Adjusted Actual Forecasting Smoothing Constant
Year Quarter Value Value Forecast Forecast Error 0.51 1 6,809 7,322 7,500 6,975 1661 2 6,465 7,183 7,411 6,670 205 Initial Estimate1 3 6,569 6,635 7,297 7,224 655 Average = 7,5001 4 8,266 7,005 6,966 8,220 462 1 7,257 7,803 6,986 6,497 760 Type of Seasonality2 2 7,064 7,849 7,394 6,655 409 Quarterly2 3 7,784 7,863 7,622 7,545 2392 4 8,724 7,393 7,742 9,136 412 Quarter Seasonal Factor3 1 6,992 7,518 7,568 7,038 46 1 0.933 2 6,822 7,580 7,543 6,789 33 2 0.903 3 7,949 8,029 7,561 7,486 463 3 0.993 4 9,650 8,178 7,795 9,199 451 4 1.184 1 7,987 7,4284 24 34 45 15 25 35 46 16 2 Mean Absolute Deviation6 3 MAD = 3246 47 1 Mean Square Error
MSE = 157,836
© The McGraw-Hill Companies, Inc., 200313.23McGraw-Hill/Irwin
A Time Series with Trend(Population of a State over Time)
1995 2000 2005 Year
Population(Millions)
4.8
5.0
5.2
5.4
Trendline
© The McGraw-Hill Companies, Inc., 200313.24McGraw-Hill/Irwin
Exponential Smoothing with Trend Forecasting Method
• The exponential smoothing with trend forecasting method uses the recent values in the time series to estimate any current upward or downward trend in these values.
Trend = Average change from one time-series value to the next
• The formula for forecasting the next value in the time series adds the estimated trend.
Forecast = (Last value) + (1 – ) (Last forecast) + Estimated trend
is the smoothing constant between 0 and 1.
• Exponential smoothing also is used to obtain and update the estimated trend.
Estimated trend = (Latest trend) + (1 – ) (Last estimate of trend)
is the trend smoothing constant.
• The formula for forecasting n periods from now is
Forecast = (Last value) + (1 – ) (Last forecast) + n (Estimated trend)
© The McGraw-Hill Companies, Inc., 200313.25McGraw-Hill/Irwin
Exponential Smoothing with Trend Applied to CCW
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A B C D E F G H I J K L M
Exponential-Smoothing with Trend Forecasting Method with Seasonality for CCW
Seasonally Seasonally True Adjusted Latest Estimated Adjusted Actual Forecasting Smoothing Constant
Year Quarter Value Value Trend Trend Forecast Forecast Error 0.31 1 6,809 7,322 0 7,500 6,975 166 0.31 2 6,465 7,183 -54 -16 7,430 6,687 2221 3 6,569 6,635 -90 -38 7,318 7,245 676 Initial Estimate1 4 8,266 7,005 -243 -100 7,013 8,276 10 Average = 7,5002 1 7,257 7,803 -102 -100 6,910 6,427 830 Trend = 02 2 7,064 7,849 167 -20 7,158 6,442 6222 3 7,784 7,863 187 42 7,407 7,333 451 Type of Seasonality2 4 8,724 7,393 179 83 7,627 9,000 276 Quarterly3 1 6,992 7,518 13 62 7,619 7,085 933 2 6,822 7,580 32 53 7,642 6,877 55 Quarter Seasonal Factor3 3 7,949 8,029 34 47 7,670 7,594 355 1 0.933 4 9,650 8,178 155 80 7,858 9,272 378 2 0.904 1 176 108 8,062 7,498 3 0.994 2 4 1.184 34 45 15 25 35 46 16 26 36 4 Mean Absolute Deviation7 1 MAD = 345
Mean Square ErrorMSE = 180,796
© The McGraw-Hill Companies, Inc., 200313.26McGraw-Hill/Irwin
MAD and MSE for the Various Forecasting Method
Forecasting Method MAD MSE
CCW’s 25 percent rule 424 317,815
Last-value method 295 145,909
Averaging method 400 242,876
Moving-average method 437 238,816
Exponential smoothing 324 157,836
Exponential smoothing with trend 345 180,796
© The McGraw-Hill Companies, Inc., 200313.27McGraw-Hill/Irwin
Using CB Predictor: Enter the Data on a Spreadsheet
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A B C D
Crystal Ball Predictor for CCW
Year Quarter Call Volume1 Q1 6,8091 Q2 6,4651 Q3 6,5691 Q4 8,2662 Q1 7,2572 Q2 7,0642 Q3 7,7842 Q4 8,7243 Q1 6,9923 Q2 6,8223 Q3 7,9493 Q4 9,650
© The McGraw-Hill Companies, Inc., 200313.29McGraw-Hill/Irwin
Using CB Predictor: Data Attributes Pane
© The McGraw-Hill Companies, Inc., 200313.30McGraw-Hill/Irwin
Using CB Predictor: Method Gallery Pane
© The McGraw-Hill Companies, Inc., 200313.33McGraw-Hill/Irwin
CB Predictor Results
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A B C D
Crystal Ball Predictor for CCW
Year Quarter Call Volume1 Q1 6,8091 Q2 6,4651 Q3 6,5691 Q4 8,2662 Q1 7,2572 Q2 7,0642 Q3 7,7842 Q4 8,7243 Q1 6,9923 Q2 6,8223 Q3 7,9493 Q4 9,6504 Q1 7,7914 Q2 7,5154 Q3 8,2034 Q4 9,799
© The McGraw-Hill Companies, Inc., 200313.34McGraw-Hill/Irwin
Relationship Between CB Predictor Techniques and the Forecasting Techniques in the Textbook
CB Predictor Technique Related Technique in Section 13.3
Single moving average Moving average
Double moving average Not covered
Single exponential smoothing Exponential smoothing
Double exponential smoothing Exponential smoothing with trend
Seasonal additive Not covered
Holt-Winters additive Not covered
Seasonal multiplicative Exponential smoothing with seasonality
Holt-Winters multiplicative Exponential smoothing with seasonality and trend
© The McGraw-Hill Companies, Inc., 200313.35McGraw-Hill/Irwin
Typical Probability Distribution of Call Volume(Assumes Mean = 7,500)
7,500 7,7507,250
Mean
© The McGraw-Hill Companies, Inc., 200313.36McGraw-Hill/Irwin
Typically Probability Distributions of Call Volumein the Four Quarters (Assumes Annual Mean = 7,500)
6,500 7,000 7,500 8,000 8,500 9,000
Quarter 2 Quarter 1 Quarter 3 Quarter 4
© The McGraw-Hill Companies, Inc., 200313.37McGraw-Hill/Irwin
Comparison of Typical Probability Distributionsof Seasonally-Adjusted Call Volumes in Years 1 and 2
6,500 7,000 7,500 8,000
Year 1 Year 2
© The McGraw-Hill Companies, Inc., 200313.38McGraw-Hill/Irwin
Comparison of the Forecasting Methods
• Last value method: Suitable for a time series that is so unstable that even the next-to-last value is not considered relevant for forecasting the next value.
• Averaging method: Suitable for a very stable time series where even its first few values are considered relevant for forecasting the next value.
• Moving-average method: Suitable for a moderately stable time series where the last few values are considered relevant for forecasting the next value.
• Exponential smoothing method: Suitable for a time series in the range from somewhat unstable to rather stable, where the value of the smoothing constant needs to be adjusted to fit the anticipated degree of stability.
• Exponential smoothing with trend: Suitable for a time series where the mean of the distribution tends to follow a trend either up or down, provided that changes in the trend occur only occasionally and gradually.
© The McGraw-Hill Companies, Inc., 200313.39McGraw-Hill/Irwin
The Consultant’s Recommendations
1. Forecasting should be done monthly rather than quarterly.
2. Hiring and training of new agents also should be done monthly.
3. Recently retired agents should be offered the opportunity to work part time on an on-call basis.
4. Since sales drive call volume, the forecasting process should begin by forecasting sales.
5. For forecasting purposes, total sales should be broken down into the major components:a) The relatively stable market base of numerous small-niche products.b) Each of the few (perhaps three or four) major new products.
6. Exponential smoothing with a relatively small smoothing constant is suggested for forecasting sales of the marketing base of numerous small-niche products.
7. Exponential smoothing with trend, with relatively large smoothing constants, is suggested for forecasting sales of each major new product.
8. Seasonally adjusted time series should be used for each application of the methods.
9. The forecasts in recommendation 5 should be summed to obtain a forecast of total sales.
10. Causal forecasting with linear regression should be used to obtain a forecast of call volume from this forecast of total sales.
© The McGraw-Hill Companies, Inc., 200313.40McGraw-Hill/Irwin
Causal Forecasting
Causal forecasting obtains a forecast of the quantity of interest (the dependent variable) by relating it directly to one or more other quantities (the independent variables) that drive the quantity of interest.
Type of ForecastingPossible Dependent
VariablePossible Independent
Variable
Sales Sales of a product Amount of advertising
Spare parts Demand for spare parts Usage of equipment
Economic trends Gross domestic product Various economic factors
CCW call volume Call volume Total sales
Any quantity This same quantity Time
© The McGraw-Hill Companies, Inc., 200313.41McGraw-Hill/Irwin
Sales and Call Volume Data for CCW
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A B C D E
CCW's Average Daily Sales and Call Volume
Sales CallYear Quarter ($thousands) Volume
1 1 4,894 6,8091 2 4,703 6,4651 3 4,748 6,5691 4 5,844 8,2662 1 5,192 7,2572 2 5,086 7,0642 3 5,511 7,7842 4 6,107 8,7243 1 5,052 6,9923 2 4,985 6,8223 3 5,576 7,9493 4 6,647 9,650
© The McGraw-Hill Companies, Inc., 200313.42McGraw-Hill/Irwin
Adding a Trendline to the Graph
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A B C D E
CCW's Average Daily Sales and Call Volume
Sales CallYear Quarter ($thousands) Volume
1 1 4,894 6,8091 2 4,703 6,4651 3 4,748 6,5691 4 5,844 8,2662 1 5,192 7,2572 2 5,086 7,0642 3 5,511 7,7842 4 6,107 8,7243 1 5,052 6,9923 2 4,985 6,8223 3 5,576 7,9493 4 6,647 9,650
© The McGraw-Hill Companies, Inc., 200313.43McGraw-Hill/Irwin
Linear Regression
• When doing causal forecasting with a single independent variable, linear regression involves approximating the relationship between the dependent variable (call volume for CCW) and the independent variable (sales for CCW) by a straight line.
• This linear regression line is drawn on a graph with the independent variable on the horizontal axis and the dependent variable on the vertical axis. The line is constructed after plotting a number of points showing each observed value of the independent variable and the corresponding value for the dependent variable.
• The linear regression line has the formy = a + bx
wherey = Estimated value of the dependent variablea = Intercept of the linear regression line with the y-axisb = Slope of the linear regression linex = Value of the independent variable
© The McGraw-Hill Companies, Inc., 200313.44McGraw-Hill/Irwin
Excel Template for Linear Regression
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A B C D E F G H I J
Linear Regression of Call Volume vs. Sales Volume for CCW
Time Independent Dependent Estimation Square Linear Regression LinePeriod Variable Variable Estimate Error of Error y = a + bx
1 4,894 6,809 6,765 43.85 1,923 a = -1,223.862 4,703 6,465 6,453 11.64 136 b = 1.633 4,748 6,569 6,527 42.18 1,7804 5,844 8,266 8,316 49.93 2,4935 5,192 7,257 7,252 5.40 29 Estimator6 5,086 7,064 7,079 14.57 212 If x = 5,0007 5,511 7,784 7,772 11.66 1368 6,107 8,724 8,745 21.26 452 then y= 6,938.189 5,052 6,992 7,023 31.07 96510 4,985 6,822 6,914 91.70 8,40811 5,576 7,949 7,878 70.55 4,97712 6,647 9,650 9,627 23.24 540
© The McGraw-Hill Companies, Inc., 200313.45McGraw-Hill/Irwin
Judgmental Forecasting Methods
• Manager’s Opinion: A single manager uses his or her best judgment.
• Jury of Executive Opinion: A small group of high-level managers pool their best judgment to collectively make the forecast.
• Salesforce Composite: A bottom-up approach where each salesperson provides an estimate of what sales will be in his or her region. These estimates are then aggregated into a corporate sales forecast.
• Consumer Market Survey: A grass-roots approach that surveys customers and potential customers regarding their future purchasing plans and how they would respond to various new features in products.
• Delphi Method: A panel of experts in different locations who independently fill out a series of questionnaires. The results from each questionnaire are provided with the next one, so each expert can evaluate the group information in adjusting his or her responses next time.
© The McGraw-Hill Companies, Inc., 200313.46McGraw-Hill/Irwin
Forecasting in Practice
• A survey of forecasting practices at 500 U.S. corporations indicates that judgmental forecasting methods are somewhat more widely used than statistical methods.
• Among judgmental methods, the most popular is a jury of executive opinion. When forecasting sales, manager’s opinion is a close second.
• Statistical forecasting methods also are fairly widely used, especially in companies with high sales.
• Among statistical methods, the moving-average method and linear regression are the most widely used. Both exponential smoothing and the last-value method also receive considerable use.
© The McGraw-Hill Companies, Inc., 200313.47McGraw-Hill/Irwin
The Forecasting Method Used in Actual Applications
Organization Quantity Being Forecasted Forecasting Method
Merit Brass Co. Sales of finished goods Exponential smoothing
Hidroelétrica Español Energy demand ARIMA (Box-Jenkins), etc.
American AirlinesDemand for different fare classes
Exponential smoothing
American AirlinesNeed for spare parts to repair airplanes
Causal forecasting with linear regression
Albuquerque Microelectronics
Production yield in wafer fabrication
Exponential smoothing with trend
U.S. Department of LaborUnemployment insurance payments
Causal forecasting with linear regression
United AirlinesDemand at reservations offices and airports
ARIMA (Box-Jenkins)
Taco Bell Number of customer arrivals Moving average
L.L. Bean Staffing needs at call center ARIMA (Box-Jenkins)
All references available for download at www.mhhe.com/hillier2e/articles