Dr. C. Lightner Fayetteville State University 1 FORECASTING TECHNIQUES Chapter 16 Qualitative Approaches to Forecasting Quantitative Approaches to Forecasting The Components of a Time Series Using Smoothing Methods in Forecasting Measures of Forecast Accuracy Using Trend Projection in Forecasting Using Regression Analysis in Forecasting
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Dr. C. Lightner Fayetteville State University 1 FORECASTING TECHNIQUES Chapter 16 Qualitative Approaches to Forecasting Quantitative Approaches to Forecasting.
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Dr. C. Lightner Fayetteville State University
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FORECASTING TECHNIQUES
Chapter 16
Qualitative Approaches to Forecasting
Quantitative Approaches to Forecasting
The Components of a Time Series
Using Smoothing Methods in Forecasting
Measures of Forecast Accuracy
Using Trend Projection in Forecasting
Using Regression Analysis in Forecasting
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Forecasting Introduction
An essential aspect of managing any organization is planning for the future.
Organizations employ forecasting techniques to determine future inventory, costs, capacities, and interest rate changes.
There are two basic approaches to forecasting:
-Qualitative
-Quantitative
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Qualitative Approaches to Forecasting
Delphi Approach– A panel of experts, each of whom is physically separated from
the others and is anonymous, is asked to respond to a sequential series of questionnaires.
– After each questionnaire, the responses are tabulated and the information and opinions of the entire group are made known to each of the other panel members so that they may revise their previous forecast response.
– The process continues until some degree of consensus is achieved.
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Qualitative Approaches (continued)
Scenario Writing– Scenario writing consists of developing a conceptual scenario
of the future based on a well defined set of assumptions. – After several different scenarios have been developed, the
decision maker determines which is most likely to occur in the future and makes decisions accordingly.
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Qualitative Approaches (continued)
Subjective or Interactive Approaches– These techniques are often used by committees or panels
seeking to develop new ideas or solve complex problems.– They often involve "brainstorming sessions". – It is important in such sessions that any ideas or opinions be
permitted to be presented without regard to its relevancy and without fear of criticism.
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Quantitative Approaches to Forecasting
Quantitative methods are based on an analysis of historical data concerning one or more time series.A time series is a set of observations measured at successive points in time or over successive periods of time.If the historical data used are restricted to past values of the series that we are trying to forecast, the procedure is called a time series method.If the historical data used involve other time series that are believed to be related to the time series that we are trying to forecast, the procedure is called a causal method. Quantitative approaches are generally preferred. In this chapter we will focus on quantitative approaches to forecasting.
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Time Series Data
Time Series Data is usually plotted on a graph to determine the various characteristics or components of the time series data.
There are 4 Major Components: Trend, Cyclical, Seasonal, and Irregular Components.
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Components of a Time Series
The trend component accounts for the gradual shifting of the time series over a long period of time.Any regular pattern of sequences of values above and below the trend line is attributable to the cyclical component of the series.The seasonal component of the series accounts for regular patterns of variability within certain time periods, such as over a year.The irregular component of the series is caused by short-term, unanticipated and non-recurring factors that affect the values of the time series. One cannot attempt to predict its impact on the time series in advance.
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Time Series Data
We will learn the following Forecasting Approaches:
Smoothing
Trend Projections
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Excel Instructions for Drawing a Scatter Plot
1. Enter data in the Excel spreadsheet.2. Click on Insert on the toolbar and then click on the Chart tab. The
Chart Wizard will appear. In step 1 on select the XY (scatter) chart type and then click next.
3. In step 2 specify the cells where your data is located in the data range box.
4. In step 3 you can give your chart a title and label your axes. In step 4 specify where you want the chart to be placed.
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During the past ten weeks, sales of cases of Comfort brand headache medicine at Robert's Drugs have been as follows:
Excel Spreadsheet Showing Input Data. Specify cells A4:B13 as the Data Range. A B
1 Robert's Drugs2
3 Week (t ) Salest
4 1 1105 2 1156 3 1257 4 1208 5 1259 6 120
10 7 13011 8 11512 9 11013 10 13014 11
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Plot Robert’s Drugs Example
Robert's Drug Example
105
110
115
120
125
130
135
0 5 10 15
Week, t
Sa
les
I labeled Robert’s DrugExample as The Chart title
I labeled Week, t as My Value (x)axis
I labeled Sales as My Value (y)axis
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Smoothing Methods
In cases in which the time series is fairly stable and has no significant trend, seasonal, or cyclical effects, one can use smoothing methods to average out the irregular components of the time series.
Three common smoothing methods are:– Moving average– Weighted moving average– Exponential smoothing
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Smoothing Methods: Moving Average
Moving Average Method
The moving average method consists of computing an average of the most recent n data values for the series and using this average for forecasting the value of the time series for the next period.
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Robert Drug’s Example: Moving Average
Our scatter plot for Robert’s Drug Sales has no significant trend, seasonal, or cyclical effects. Thus we should employ a smoothing technique for forecasting sales.
Forecast the sales for period 11 using a three period moving average (MA3).
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Example: Robert’s Drugs: Moving Average
Steps to Moving Average Using Excel
Step 1: Select the Tools pull-down menu.
Step 2: Select the Data Analysis option.
Step 3: When the Data Analysis Tools dialog appears, choose Moving Average.
Step 4: When the Moving Average dialog box appears:
Enter B4:B13 in the Input Range box.
Enter 3 in the Interval box.
Enter C5 in the Output Range box.
Select OK.
This specifies the value of n
This is the column following our data,and one row below whereour data begins.
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Robert’s Drugs: Moving Average
MA3 (Three period Moving average) for Robert’s Drug Example
Ft is the forecast for week t.
F4 (forecast for week 4)=116.7
F11 (forecast for week 11)=118.3
Thus we would forecast the sales for Week 11 to be 118.3
The weighted moving average method consists of computing a weighted average of the most recent n data values for the series and using this weighted average for forecasting the value of the time series for the next period. The more recent observations are typically given more weight than older observations. For convenience, the weights usually sum to 1.
The regular moving average gives equal weight to past data values when computing a forecast for the next period. The weighted moving average allows different weights to be allocated to past data values.
There is no Excel command for computing this so you must do this manually. You can either manually enter the formulas into excel and apply to all periods or compute value by hand.
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Smoothing Methods: Weighted Moving Average
Use a 3 period weighted moving average to forecast the sales for week 11 giving a weight of 0.6 to the most recent period, 0.3 to the second most recent period, and 0.1 to the third most recent period.
F11 = (0.6)*130 + (0.3)*110 + (0.1)* 115= 122.5
Thus we would forecast the sales for week 11 to be 122.5.
Sales for themost recentperiod
Sales for 2nd most recentperiod
Sales for 3rd most recentperiod
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Smoothing Methods: Exponential Smoothing
Exponential Smoothing– Using exponential smoothing, the forecast for the next
period is equal to the forecast for the current period plus a
proportion () of the forecast error in the current period.
– Using exponential smoothing, the forecast is calculated by:
Ft+1=Yt + (1- )Ft
where: is the smoothing constant (a number between 0 and
1)Ft is the forecast for period t
Ft +1 is the forecast for period t+1
Yt is the actual data value for period t
This is the same as Ft+1 = Ft + α (Yt – Ft)
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Robert’s Drugs: Exponential Smoothing
Forecast the sales for period 11 using Exponential Smoothing α= 0.1.
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Robert’s Drugs: Exponential Smoothing
Steps to Exponential Smoothing Using ExcelStep 1: Select the Tools pull-down menu.
Step 2: Select the Data Analysis option.
Step 3: When the Data Analysis Tools dialog appears, choose Exponential Smoothing.
Step 4: When the Exponential Smoothing dialog box appears:
Thus we would forecast sales for week 11 to be 116.87
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Questions That You Should Be Asking
For the Moving Average technique, how do I determine the best value of n to use for forecasting?
For Exponential Smoothing, how do I determine the best value of α to use?
If I realize that a smoothing technique should be employed, how do you know which smoothing technique is best?
In order to answer the above questions, we need criteria for judging the accuracy of a forecasting technique. Once we select a criterion, the method (or parameter) which provides the best value for our criterion is the best method (or parameter) to use for forecasting our scenario.
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Measures of Forecast Accuracy
Mean Squared Error (MSE)
The average of the squared forecast errors for the historical data is calculated. The forecasting method or parameter(s) which minimize this mean squared error is then selected.
Mean Absolute Deviation (MAD)
The mean of the absolute values of all forecast errors is calculated, and the forecasting method or parameter(s) which minimize this measure is selected. The mean absolute deviation measure is less sensitive to individual large forecast errors than the mean squared error measure.
You may choose either of the above criteria for evaluating the accuracy of a method (or parameter).
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Selecting the best Smoothing Technique for Robert’s Drugs
Determine the smoothing technique that is best for forecasting Robert’s Drug sales: A two period moving average, a three period moving average, exponential smoothing (α=0.1), or exponential smoothing (α=0.2)
Realistically we should have experimented with more values of n for the moving average, and α for exponential smoothing to determine the absolute best parameters to use for our technique.
On the next slide we randomly chose to use the MSE criterion to judge the best technique.
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Robert’s Drugs :Comparing Smoothing Techniques
Double click on the Excel sheet below to enter actual Excel spreadsheet that I created. Clicking on individual cells will provide the formulas that were entered to compute the observed values.
Since the three period moving average technique (MA3) provides to lowest MSE value, this is the best smoothing technique to use for forecasting Robert’s Drug Sales.
Dr. C. Lightner Fayetteville State University
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Trend Projection
If a time series exhibits a linear trend, the method of least squares may be used to determine a trend line (projection) for future forecasts.
Least squares, also used in regression analysis, determines the unique trend line forecast which minimizes the mean square error between the trend line forecasts and the actual observed values for the time series.
The independent variable is the time period and the dependent variable is the actual observed value in the time series.
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Trend Projection
Using the method of least squares, the formula for the trend projection is: Yt = b0 + b1t.
where: Yt = trend forecast for time period t b1 = slope of the trend line
b0 = trend line projection for time 0
b1 = ntYt - t Yt
nt 2 - (t )2
where: Yt = observed value of the time series at time period t
= average of the observed values for Yt
= average time period for the n observations
0 1b Y b t 0 1b Y b t
tt
tt YY
tt
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Example: Auger’s Plumbing Service
The number of plumbing repair jobs performed by Auger's Plumbing Service in each of the last nine months are listed below.
Month Jobs Month Jobs Month Jobs March 353 June 374 September 399 April 387 July 396 October 412 May 342 August 409 November 408
Forecast the number of repair jobs Auger's will perform in December using the least squares method.
Suppose we neglected to plot Robert’s Drug example, and therefore we do not know that a trend does not exist. Use trend analysis to forecast the sales for month 11.
How could we use the MSE or MAD to verify that the MA3 is a better smoothing technique than trend analysis for Robert’s Drug Sales data?
Dr. C. Lightner Fayetteville State University
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Causal Method: Regression Analysis
Regression Analysis is similar to trend analysis, except the independent variable is not restricted to time. Refer to Robert’s Drug example. Instead of letting time represent our independent variable, we could forecast sales based upon the price of the product. Since products often go on sale, we could collect data over several months collecting the weekly price and number of items sold for the week. For this model, we would find the regression equation in the same manner in which we found the trend line except we would call the independent variable x, instead of t.
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Regression Equation
Using the method of least squares, the formula for the regression line is: Y = b0 + b1x.
where: Y= dependent variable which depends on the value of x b1 = slope of the regression line
b0 = regression line projection for x= 0
b1 = nXiYi - Xi Yi
nXi2 - (Xi)2
where: Yt = observed value of the time series at time period t
= average of the observed values for Yt
= average time period for the n observations
tt
tt
YY
tt
b y b x0 1
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Regression Analysis in Excel
The dependent variable Y can predicted using the same forecast function in Excel as used to forecast a trend line. Follow the same steps provided on slide 39.
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THE END
See your textbook for more examples and detailed explanations