Title: Forecasting in POM
1(No Transcript)
2Chapter 3
3Overview
- Introduction
- Qualitative Forecasting Methods
- Quantitative Forecasting Models
- How to Have a Successful Forecasting System
- Computer Software for Forecasting
- Forecasting in Small Businesses and Start-Up
Ventures - Wrap-Up What World-Class Producers Do
4Introduction
- Demand estimates for products and services are
the starting point for all the other planning in
operations management. - Management teams develop sales forecasts based in
part on demand estimates. - The sales forecasts become inputs to both
business strategy and production resource
forecasts.
5Forecasting is an Integral Part of Business
Planning
Demand Estimates
Inputs Market, Economic, Other
Forecast Method(s)
Sales Forecast
Management Team
Business Strategy
Production Resource Forecasts
6Some Reasons WhyForecasting is Essential in OM
- New Facility Planning It can take 5 years to
design and build a new factory or design and
implement a new production process. - Production Planning Demand for products vary
from month to month and it can take several
months to change the capacities of production
processes. - Workforce Scheduling Demand for services (and
the necessary staffing) can vary from hour to
hour and employees weekly work schedules must be
developed in advance.
7Examples of Production Resource Forecasts
Forecast Horizon
Time Span
Item Being Forecasted
Unit of Measure
Long Range
Years
Product Lines, Factory Capacities
Dollars, Tons
Medium Range
Months
Product Groups, Depart. Capacities
Units, Pounds
Short Range
Days, Weeks
Specific Products, Machine Capacities
Units, Hours
8Forecasting Methods
- Qualitative Approaches
- Quantitative Approaches
9Qualitative Approaches
- Usually based on judgments about causal factors
that underlie the demand of particular products
or services - Do not require a demand history for the product
or service, therefore are useful for new
products/services - Approaches vary in sophistication from
scientifically conducted surveys to intuitive
hunches about future events - The approach/method that is appropriate depends
on a products life cycle stage
10Qualitative Methods
- Educated guess intuitive hunches
- Executive committee consensus
- Delphi method
- Survey of sales force
- Survey of customers
- Historical analogy
- Market research scientifically conducted
surveys
11Quantitative Forecasting Approaches
- Based on the assumption that the forces that
generated the past demand will generate the
future demand, i.e., history will tend to repeat
itself - Analysis of the past demand pattern provides a
good basis for forecasting future demand - Majority of quantitative approaches fall in the
category of time series analysis
12Time Series Analysis
- A time series is a set of numbers where the order
or sequence of the numbers is important, e.g.,
historical demand - Analysis of the time series identifies patterns
- Once the patterns are identified, they can be
used to develop a forecast
13Components of a Time Series
- Trends are noted by an upward or downward sloping
line. - Cycle is a data pattern that may cover several
years before it repeats itself. - Seasonality is a data pattern that repeats itself
over the period of one year or less. - Random fluctuation (noise) results from random
variation or unexplained causes.
14Seasonal Patterns
- Length of Time Number of
- Before Pattern Length of
Seasons - Is Repeated Season in
Pattern - Year Quarter 4
- Year Month 12
- Year Week 52
- Month Day 28-31
- Week Day 7
-
15Quantitative Forecasting Approaches
- Linear Regression
- Simple Moving Average
- Weighted Moving Average
- Exponential Smoothing (exponentially weighted
moving average) - Exponential Smoothing with Trend (double
exponential smoothing)
16Long-Range Forecasts
- Time spans usually greater than one year
- Necessary to support strategic decisions about
planning products, processes, and facilities
17Simple Linear Regression
- Linear regression analysis establishes a
relationship between a dependent variable and one
or more independent variables. - In simple linear regression analysis there is
only one independent variable. - If the data is a time series, the independent
variable is the time period. - The dependent variable is whatever we wish to
forecast.
18Simple Linear Regression
- Regression Equation
- This model is of the form
- Y a bX
- Y dependent variable
- X independent variable
- a y-axis intercept
- b slope of regression line
19Simple Linear Regression
- Constants a and b
- The constants a and b are computed using the
following equations
20Simple Linear Regression
- Once the a and b values are computed, a future
value of X can be entered into the regression
equation and a corresponding value of Y (the
forecast) can be calculated.
21Example College Enrollment
- Simple Linear Regression
- At a small regional college enrollments have
grown steadily over the past six years, as
evidenced below. Use time series regression to
forecast the student enrollments for the next
three years. - Students Students
- Year Enrolled (1000s) Year Enrolled
(1000s) - 1 2.5 4 3.2
- 2 2.8 5 3.3
- 3 2.9 6 3.4
22Example College Enrollment
- Simple Linear Regression
-
- x y x2 xy
- 1 2.5 1 2.5
- 2 2.8 4 5.6
- 3 2.9 9 8.7
- 4 3.2 16 12.8
- 5 3.3 25 16.5
- 6 3.4 36 20.4
- Sx21 Sy18.1 Sx291 Sxy66.5
23Example College Enrollment
- Simple Linear Regression
-
- Y 2.387 0.180X
24Example College Enrollment
- Simple Linear Regression
- Y7 2.387 0.180(7) 3.65 or 3,650 students
- Y8 2.387 0.180(8) 3.83 or 3,830 students
- Y9 2.387 0.180(9) 4.01 or 4,010 students
- Note Enrollment is expected to increase by 180
- students per year.
25Simple Linear Regression
- Simple linear regression can also be used when
the independent variable X represents a variable
other than time. - In this case, linear regression is representative
of a class of forecasting models called causal
forecasting models.
26Example Railroad Products Co.
- Simple Linear Regression Causal Model
- The manager of RPC wants to project the firms
sales for the next 3 years. He knows that RPCs
long-range sales are tied very closely to
national freight car loadings. On the next slide
are 7 years of relevant historical data. - Develop a simple linear regression model
between RPC sales and national freight car
loadings. Forecast RPC sales for the next 3
years, given that the rail industry estimates car
loadings of 250, 270, and 300 million.
27Example Railroad Products Co.
- Simple Linear Regression Causal Model
- RPC Sales Car Loadings
- Year (millions) (millions)
- 1 9.5 120
- 2 11.0 135
- 3 12.0 130
- 4 12.5 150
- 5 14.0 170
- 6 16.0 190
- 7 18.0 220
28Example Railroad Products Co.
- Simple Linear Regression Causal Model
- x y x2 xy
- 120 9.5 14,400 1,140
- 135 11.0 18,225 1,485
- 130 12.0 16,900 1,560
- 150 12.5 22,500 1,875
- 170 14.0 28,900 2,380
- 190 16.0 36,100 3,040
- 220 18.0 48,400 3,960
- 1,115 93.0 185,425 15,440
29Example Railroad Products Co.
- Simple Linear Regression Causal Model
- Y 0.528 0.0801X
30Example Railroad Products Co.
- Simple Linear Regression Causal Model
- Y8 0.528 0.0801(250) 20.55 million
- Y9 0.528 0.0801(270) 22.16 million
- Y10 0.528 0.0801(300) 24.56 million
- Note RPC sales are expected to increase by
80,100 for each additional million national
freight car loadings.
31Multiple Regression Analysis
- Multiple regression analysis is used when there
are two or more independent variables. - An example of a multiple regression equation is
- Y 50.0 0.05X1 0.10X2 0.03X3
- where Y firms annual sales (millions)
- X1 industry sales (millions)
- X2 regional per capita income
(thousands) - X3 regional per capita debt (thousands)
32Coefficient of Correlation (r)
- The coefficient of correlation, r, explains the
relative importance of the relationship between x
and y. - The sign of r shows the direction of the
relationship. - The absolute value of r shows the strength of the
relationship. - The sign of r is always the same as the sign of
b. - r can take on any value between 1 and 1.
33Coefficient of Correlation (r)
- Meanings of several values of r
- -1 a perfect negative relationship (as x
goes up, y goes down by one unit, and vice
versa) - 1 a perfect positive relationship (as x
goes up, y goes up by one unit, and vice
versa) - 0 no relationship exists between x and y
- 0.3 a weak positive relationship
- -0.8 a strong negative relationship
34Coefficient of Correlation (r)
35Coefficient of Determination (r2)
- The coefficient of determination, r2, is the
square of the coefficient of correlation. - The modification of r to r2 allows us to shift
from subjective measures of relationship to a
more specific measure. - r2 is determined by the ratio of explained
variation to total variation
36Example Railroad Products Co.
- Coefficient of Correlation
- x y x2 xy y2
- 120 9.5 14,400 1,140 90.25
- 135 11.0 18,225 1,485 121.00
- 130 12.0 16,900 1,560 144.00
- 150 12.5 22,500 1,875 156.25
- 170 14.0 28,900 2,380 196.00
- 190 16.0 36,100 3,040 256.00
- 220 18.0 48,400 3,960 324.00
- 1,115 93.0 185,425 15,440 1,287.50
37Example Railroad Products Co.
- Coefficient of Correlation
- r .9829
-
38Example Railroad Products Co.
- Coefficient of Determination
- r2 (.9829)2 .966
- 96.6 of the variation in RPC sales is explained
by national freight car loadings.
39Ranging Forecasts
- Forecasts for future periods are only estimates
and are subject to error. - One way to deal with uncertainty is to develop
best-estimate forecasts and the ranges within
which the actual data are likely to fall. - The ranges of a forecast are defined by the upper
and lower limits of a confidence interval.
40Ranging Forecasts
- The ranges or limits of a forecast are estimated
by - Upper limit Y t(syx)
- Lower limit Y - t(syx)
- where
- Y best-estimate forecast
- t number of standard deviations from the
mean of the distribution to provide a
given proba- bility of exceeding the limits
through chance - syx standard error of the forecast
41Ranging Forecasts
- The standard error (deviation) of the forecast is
computed as
42Example Railroad Products Co.
- Ranging Forecasts
- Recall that linear regression analysis provided
a forecast of annual sales for RPC in year 8
equal to 20.55 million. - Set the limits (ranges) of the forecast so that
there is only a 5 percent probability of
exceeding the limits by chance.
43Example Railroad Products Co.
- Ranging Forecasts
- Step 1 Compute the standard error of the
forecasts, syx. - Step 2 Determine the appropriate value for t.
- n 7, so degrees of freedom n 2 5.
- Area in upper tail .05/2 .025
- Appendix B, Table 2 shows t 2.571.
44Example Railroad Products Co.
- Ranging Forecasts
- Step 3 Compute upper and lower limits.
- Upper limit 20.55 2.571(.5748)
- 20.55 1.478
- 22.028
- Lower limit 20.55 - 2.571(.5748)
- 20.55 - 1.478
- 19.072
- We are 95 confident the actual sales for year 8
will be between 19.072 and 22.028 million.
45Seasonalized Time Series Regression Analysis
- Select a representative historical data set.
- Develop a seasonal index for each season.
- Use the seasonal indexes to deseasonalize the
data. - Perform lin. regr. analysis on the deseasonalized
data. - Use the regression equation to compute the
forecasts. - Use the seas. indexes to reapply the seasonal
patterns to the forecasts.
46Example Computer Products Corp.
- Seasonalized Times Series Regression Analysis
- An analyst at CPC wants to develop next years
quarterly forecasts of sales revenue for CPCs
line of Epsilon Computers. She believes that the
most recent 8 quarters of sales (shown on the
next slide) are representative of next years
sales.
47Example Computer Products Corp.
- Seasonalized Times Series Regression Analysis
- Representative Historical Data Set
- Year Qtr. (mil.) Year Qtr. (mil.)
-
- 1 1 7.4 2 1 8.3
- 1 2 6.5 2 2 7.4
- 1 3 4.9 2 3 5.4
- 1 4 16.1 2 4 18.0
48Example Computer Products Corp.
- Seasonalized Times Series Regression Analysis
- Compute the Seasonal Indexes
- Quarterly Sales
- Year Q1 Q2 Q3 Q4 Total
- 1 7.4 6.5 4.9 16.1 34.9
- 2 8.3 7.4 5.4 18.0 39.1
- Totals 15.7 13.9 10.3 34.1 74.0
- Qtr. Avg. 7.85 6.95 5.15 17.05 9.25
- Seas.Ind. .849 .751 .557 1.843 4.000
49Example Computer Products Corp.
- Seasonalized Times Series Regression Analysis
- Deseasonalize the Data
- Quarterly Sales
- Year Q1 Q2 Q3 Q4
- 1 8.72 8.66 8.80 8.74
- 2 9.78 9.85 9.69 9.77
50Example Computer Products Corp.
- Seasonalized Times Series Regression Analysis
- Perform Regression on Deseasonalized Data
- Yr. Qtr. x y x2 xy
- 1 1 1 8.72 1 8.72
- 1 2 2 8.66 4 17.32
- 1 3 3 8.80 9 26.40
- 1 4 4 8.74 16 34.96
- 2 1 5 9.78 25 48.90
- 2 2 6 9.85 36 59.10
- 2 3 7 9.69 49 67.83
- 2 4 8 9.77 64 78.16
- Totals 36 74.01 204 341.39
51Example Computer Products Corp.
- Seasonalized Times Series Regression Analysis
- Perform Regression on Deseasonalized Data
- Y 8.357 0.199X
52Example Computer Products Corp.
- Seasonalized Times Series Regression Analysis
- Compute the Deseasonalized Forecasts
- Y9 8.357 0.199(9) 10.148
- Y10 8.357 0.199(10) 10.347
- Y11 8.357 0.199(11) 10.546
- Y12 8.357 0.199(12) 10.745
- Note Average sales are expected to increase by
- .199 million (about 200,000) per quarter.
53Example Computer Products Corp.
- Seasonalized Times Series Regression Analysis
- Seasonalize the Forecasts
- Seas. Deseas. Seas.
- Yr. Qtr. Index Forecast Forecast
- 3 1 .849 10.148 8.62
- 3 2 .751 10.347 7.77
- 3 3 .557 10.546 5.87
- 3 4 1.843 10.745 19.80
54Short-Range Forecasts
- Time spans ranging from a few days to a few weeks
- Cycles, seasonality, and trend may have little
effect - Random fluctuation is main data component
55Evaluating Forecast-Model Performance
- Short-range forecasting models are evaluated on
the basis of three characteristics - Impulse response
- Noise-dampening ability
- Accuracy
56Evaluating Forecast-Model Performance
- Impulse Response and Noise-Dampening Ability
- If forecasts have little period-to-period
fluctuation, they are said to be noise dampening. - Forecasts that respond quickly to changes in data
are said to have a high impulse response. - A forecast system that responds quickly to data
changes necessarily picks up a great deal of
random fluctuation (noise). - Hence, there is a trade-off between high impulse
response and high noise dampening.
57Evaluating Forecast-Model Performance
- Accuracy
- Accuracy is the typical criterion for judging the
performance of a forecasting approach - Accuracy is how well the forecasted values match
the actual values
58Monitoring Accuracy
- Accuracy of a forecasting approach needs to be
monitored to assess the confidence you can have
in its forecasts and changes in the market may
require reevaluation of the approach - Accuracy can be measured in several ways
- Standard error of the forecast (covered earlier)
- Mean absolute deviation (MAD)
- Mean squared error (MSE)
59Monitoring Accuracy
- Mean Absolute Deviation (MAD)
60Monitoring Accuracy
- Mean Squared Error (MSE)
- MSE (Syx)2
-
- A small value for Syx means data points are
tightly grouped around the line and error range
is small. - When the forecast errors are normally
distributed, the values of MAD and syx are
related -
- MSE 1.25(MAD)
61Short-Range Forecasting Methods
- (Simple) Moving Average
- Weighted Moving Average
- Exponential Smoothing
- Exponential Smoothing with Trend
62Simple Moving Average
- An averaging period (AP) is given or selected
- The forecast for the next period is the
arithmetic average of the AP most recent actual
demands - It is called a simple average because each
period used to compute the average is equally
weighted - . . . more
63Simple Moving Average
- It is called moving because as new demand data
becomes available, the oldest data is not used - By increasing the AP, the forecast is less
responsive to fluctuations in demand (low impulse
response and high noise dampening) - By decreasing the AP, the forecast is more
responsive to fluctuations in demand (high
impulse response and low noise dampening)
64Weighted Moving Average
- This is a variation on the simple moving average
where the weights used to compute the average are
not equal. - This allows more recent demand data to have a
greater effect on the moving average, therefore
the forecast. - . . . more
65Weighted Moving Average
- The weights must add to 1.0 and generally
decrease in value with the age of the data. - The distribution of the weights determine the
impulse response of the forecast.
66Exponential Smoothing
- The weights used to compute the forecast (moving
average) are exponentially distributed. - The forecast is the sum of the old forecast and a
portion (a) of the forecast error (A t-1 - Ft-1). - Ft Ft-1 a(A t-1 - Ft-1)
- . . . more
67Exponential Smoothing
- The smoothing constant, ?, must be between 0.0
and 1.0. - A large ? provides a high impulse response
forecast. - A small ? provides a low impulse response
forecast.
68Example Central Call Center
- Moving Average
- CCC wishes to forecast the number of incoming
calls it receives in a day from the customers of
one of its clients, BMI. CCC schedules the
appropriate number of telephone operators based
on projected call volumes. - CCC believes that the most recent 12 days of
call volumes (shown on the next slide) are
representative of the near future call volumes. -
69Example Central Call Center
- Moving Average
- Representative Historical Data
- Day Calls Day Calls
- 1 159 7 203
- 2 217 8 195
- 3 186 9 188
- 4 161 10 168
- 5 173 11 198
- 6 157 12 159
70Example Central Call Center
- Moving Average
- Use the moving average method with an AP 3
days to develop a forecast of the call volume in
Day 13. - F13 (168 198 159)/3 175.0 calls
71Example Central Call Center
- Weighted Moving Average
- Use the weighted moving average method with an
AP 3 days and weights of .1 (for oldest datum),
.3, and .6 to develop a forecast of the call
volume in Day 13. - F13 .1(168) .3(198) .6(159) 171.6
calls - Note The WMA forecast is lower than the MA
forecast because Day 13s relatively low call
volume carries almost twice as much weight in the
WMA (.60) as it does in the MA (.33).
72Example Central Call Center
- Exponential Smoothing
- If a smoothing constant value of .25 is used
and the exponential smoothing forecast for Day 11
was 180.76 calls, what is the exponential
smoothing forecast for Day 13? - F12 180.76 .25(198 180.76) 185.07
- F13 185.07 .25(159 185.07) 178.55
73Example Central Call Center
- Forecast Accuracy - MAD
- Which forecasting method (the AP 3 moving
average or the a .25 exponential smoothing) is
preferred, based on the MAD over the most recent
9 days? (Assume that the exponential smoothing
forecast for Day 3 is the same as the actual call
volume.) -
74Example Central Call Center
- AP 3 a .25
- Day Calls Forec. Error Forec. Error
- 4 161 187.3 26.3 186.0 25.0
- 5 173 188.0 15.0 179.8 6.8
- 6 157 173.3 16.3 178.1 21.1
- 7 203 163.7 39.3 172.8 30.2
- 8 195 177.7 17.3 180.4 14.6
- 9 188 185.0 3.0 184.0 4.0
- 10 168 195.3 27.3 185.0 17.0
- 11 198 183.7 14.3 180.8 17.2
- 12 159 184.7 25.7 185.1 26.1
- MAD 20.5 18.0
75Exponential Smoothing with Trend
- As we move toward medium-range forecasts, trend
becomes more important. - Incorporating a trend component into
exponentially smoothed forecasts is called double
exponential smoothing. - The estimate for the average and the estimate for
the trend are both smoothed.
76Exponential Smoothing with Trend
- Model Form
- FTt St-1 Tt-1
- where
- FTt forecast with trend in period t
- St-1 smoothed forecast (average) in period
t-1 - Tt-1 smoothed trend estimate in period t-1
77Exponential Smoothing with Trend
- Smoothing the Average
- St FTt a (At FTt)
- Smoothing the Trend
- Tt Tt-1 b (FTt FTt-1 - Tt-1)
- where a smoothing constant for the
average - b smoothing constant for the trend
78Criteria for Selectinga Forecasting Method
- Cost
- Accuracy
- Data available
- Time span
- Nature of products and services
- Impulse response and noise dampening
79Criteria for Selectinga Forecasting Method
- Cost and Accuracy
- There is a trade-off between cost and accuracy
generally, more forecast accuracy can be obtained
at a cost. - High-accuracy approaches have disadvantages
- Use more data
- Data are ordinarily more difficult to obtain
- The models are more costly to design, implement,
and operate - Take longer to use
80Criteria for Selectinga Forecasting Method
- Cost and Accuracy
- Low/Moderate-Cost Approaches statistical
models, historical analogies, executive-committee
consensus - High-Cost Approaches complex econometric
models, Delphi, and market research
81Criteria for Selectinga Forecasting Method
- Data Available
- Is the necessary data available or can it be
economically obtained? - If the need is to forecast sales of a new
product, then a customer survey may not be
practical instead, historical analogy or market
research may have to be used.
82Criteria for Selectinga Forecasting Method
- Time Span
- What operations resource is being forecast and
for what purpose? - Short-term staffing needs might best be forecast
with moving average or exponential smoothing
models. - Long-term factory capacity needs might best be
predicted with regression or executive-committee
consensus methods.
83Criteria for Selectinga Forecasting Method
- Nature of Products and Services
- Is the product/service high cost or high volume?
- Where is the product/service in its life cycle?
- Does the product/service have seasonal demand
fluctuations?
84Criteria for Selectinga Forecasting Method
- Impulse Response and Noise Dampening
- An appropriate balance must be achieved between
- How responsive we want the forecasting model to
be to changes in the actual demand data - Our desire to suppress undesirable chance
variation or noise in the demand data
85Reasons for Ineffective Forecasting
- Not involving a broad cross section of people
- Not recognizing that forecasting is integral to
business planning - Not recognizing that forecasts will always be
wrong - Not forecasting the right things
- Not selecting an appropriate forecasting method
- Not tracking the accuracy of the forecasting
models
86Monitoring and Controllinga Forecasting Model
- Tracking Signal (TS)
- The TS measures the cumulative forecast error
over n periods in terms of MAD - If the forecasting model is performing well, the
TS should be around zero - The TS indicates the direction of the forecasting
error if the TS is positive -- increase the
forecasts, if the TS is negative -- decrease the
forecasts.
87Monitoring and Controllinga Forecasting Model
- Tracking Signal
- The value of the TS can be used to automatically
trigger new parameter values of a model, thereby
correcting model performance. - If the limits are set too narrow, the parameter
values will be changed too often. - If the limits are set too wide, the parameter
values will not be changed often enough and
accuracy will suffer.
88Computer Software for Forecasting
- Examples of computer software with forecasting
capabilities - Forecast Pro
- Autobox
- SmartForecasts for Windows
- SAS
- SPSS
- SAP
- POM Software Libary
Primarily for forecasting
Have Forecasting modules
89Forecasting in Small Businessesand Start-Up
Ventures
- Forecasting for these businesses can be difficult
for the following reasons - Not enough personnel with the time to forecast
- Personnel lack the necessary skills to develop
good forecasts - Such businesses are not data-rich environments
- Forecasting for new products/services is always
difficult, even for the experienced forecaster
90Sources of Forecasting Data and Help
- Government agencies at the local, regional,
state, and federal levels - Industry associations
- Consulting companies
91Some Specific Forecasting Data
- Consumer Confidence Index
- Consumer Price Index (CPI)
- Gross Domestic Product (GDP)
- Housing Starts
- Index of Leading Economic Indicators
- Personal Income and Consumption
- Producer Price Index (PPI)
- Purchasing Managers Index
- Retail Sales
92Wrap-Up World-Class Practice
- Predisposed to have effective methods of
forecasting because they have exceptional
long-range business planning - Formal forecasting effort
- Develop methods to monitor the performance of
their forecasting models - Do not overlook the short run.... excellent short
range forecasts as well