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Business Forecasting 1 Dr. Mohammed Alahmed (011) 4674108 Dr. Mohammed Alahmed.

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Presentation on theme: "Business Forecasting 1 Dr. Mohammed Alahmed (011) 4674108 Dr. Mohammed Alahmed."— Presentation transcript:

1 Business Forecasting 1 Dr. Mohammed Alahmed alahmed@ksu.edu.sa (011) 4674108 Dr. Mohammed Alahmed

2 Introduction What is Forecasting? –A planning tool that helps management in its attempts to cope with the uncertainty of the future, relying mainly on data from the past and present and analysis of trends. –The process of predicting a future event based on historical data. –Forecasting is a tool used for predicting future demand based on past demand information. 2 Dr. Mohammed Alahmed

3 Why is forecasting important ? We forecast very different things such as weather, traffic, stock market, state of our economy from different perspectives. Almost every business attempt is based on forecasting. Forecasting is an essential element of most business decisions. Forecasting is important in the business decision-making process. Forecasting reduces the range of uncertainty about the future. 3Dr. Mohammed Alahmed

4 Forecasting can be used for: – Strategic planning (long range planning) – Finance and accounting (budgets and cost controls) – Marketing (future sales, new products) – Production and operations 4Dr. Mohammed Alahmed

5 Time JanFebMarAprMayJunJulAug Actual demand (past sales) Predicted demand We try to predict the future by looking back at the past Predicted demand looking back six months 5Dr. Mohammed Alahmed

6 Forecasting Methods Qualitative Based on subjective opinions from one or more experts Quantitative Based on data and analytical techniques 6Dr. Mohammed Alahmed

7 Qualitative Forecasting Methods Judgment Methods Sales force composite Executive Judgement Delphi Method Counting Methods Market testing Consumer market survey Industrial market survey 7Dr. Mohammed Alahmed

8 Advantages Do not require mathematical background Wide acceptance Very Long-range forecasting Disadvantages Biased Not consistently accurate over time 8Dr. Mohammed Alahmed

9 Quantitative Forecasting MethodsTime Series Moving averages Exponential smoothing Adaptive filtering Trend analysis Time series decomposition Box-Jenkins Causal Methods Correlation methods Regression models Leading indicators Econometric tests 9Dr. Mohammed Alahmed

10 Selecting a Forecasting Method Data availability –Do you have historical data available? Time horizon for the forecast –Is the forecast for short-run or long-run purposes? Required accuracy –How much accuracy is desired? –Is there a minimum tolerance level of error? Required Resources –How much time and money are you willing to spend on your forecast? 10Dr. Mohammed Alahmed

11 Who needs forecasts? Every organizations, large and small, private and public. Needs for forecasts cuts across all functional lines. –It applies to problems such as: How much this company worth? (Finance) Will a new product be successful? (Marketing) What level of inventories should be kept? (Production) How can we identify the best job candidates? (Personnel) Dr. Mohammed Alahmed11

12 Naïve Method 1 It is based solely on the most recent information available. Suitable when there is small data set. Some times it is called the “no change” forecast. The naïve forecast for each period is the immediately proceeding observation. Dr. Mohammed Alahmed12

13 Naïve Method 1 The simplest naïve forecasting model, in which the forecast value is equal to the previous observed value, can be described in algebraic form as follows: Since it discards all other observations, it tracks changes rapidly. Dr. Mohammed Alahmed13

14 Example: Sales of saws for Acme Tool Company,1994-2000 The following table shows the sales of saws for the Acme tool Company. These data are shown graphically as well. In both forms of presentation you can see that the sales varied considerably throughout this period, from a low of 150 in 1996Q3 to a high of 850 in 2000Q1. The Fluctuations in most economic and business series (variables) are best seen after converting the data graphic form. Dr. Mohammed Alahmed14

15 Dr. Mohammed Alahmed15

16 Example: Sales of saws for Acme Tool Company,1994-2000 The forecast for the first quarter of 2000, using the naïve method is: Dr. Mohammed Alahmed16

17 Example: Sales of saws for Acme Tool Company,1994-2000 Dr. Mohammed Alahmed17

18 Example :Sales of saws for Acme Tool Company,1994-2000 Dr. Mohammed Alahmed18

19 Naïve Method 2 One might argue that in addition to considering just the recent observation, it would make sense to consider the direction from which we arrived at the latest observation. That is: if the series dropped to the latest point, perhaps it is reasonable to assume further drop and if we have observed an increase, it may make sense to factor into our forecast some further increase. Dr. Mohammed Alahmed19

20 Naïve Method 2 In general algebraic terms the model becomes Where P is the proportion of the change between period t-2 and t-1 that we choose to include in the forecast. We call this Naïve method(2). Dr. Mohammed Alahmed20

21 Example: Sales of saws for Acme Tool Company,1994-2000 The forecast for the first quarter of 2000 using the Naïve method(2) with P = 50% is: Dr. Mohammed Alahmed21

22 Example: Sales of saws for Acme Tool Company,1994-2000 Dr. Mohammed Alahmed22

23 Example: Sales of saws for Acme Tool Company,1994-2000 Dr. Mohammed Alahmed23

24 Evaluating Forecasts We have looked at two alternative forecasts of the sales for the Acme Tool Company. Which forecast is best depends on the particular year or years you look at. It is not always possible to find one model that is always best for any given set of business or economic data. But we need some way to evaluate the accuracy of forecasting models over a number of periods so that we can identify the model that generally works the best. Dr. Mohammed Alahmed24

25 Evaluating Forecasts Among a number of possible criteria that could be used, five common ones are: 1.Mean absolute error (MAE) 2.Mean percentage error (MPE) 3.Mean absolute percentage error (MAPE) 4.Mean squared Error (MSE) 5.Root Mean squared Error (RMSE) 6.Theil’s U-statistic Dr. Mohammed Alahmed25

26 Evaluating Forecasts To illustrate how each of these is calculated, let: y t = Actual value in period t = Forecast value in period t n = number of periods used in the calculation Dr. Mohammed Alahmed26

27 Mean Absolute Error The mean absolute error (MAE) Measures forecast accuracy by averaging the magnitudes of the forecast errors. Dr. Mohammed Alahmed27

28 Mean Percentage Error The Mean Percentage Error (MPE) Can be used to determine if a forecasting method is biased (consistently forecasting low or high) Large positive MPE implies that the method consistently under estimates. Large negative MPE implies that the method consistently over estimates. The forecasting method is unbiased if MPE is close to zero. Dr. Mohammed Alahmed28

29 Mean absolute Percentage Error The Mean Absolute Percentage Error (MAPE) Provides an indication of how large the forecast errors are in comparison to actual values of the series. Especially useful when the y t values are large. Can be used to compare the accuracy of the same or different methods on two different time series data. Dr. Mohammed Alahmed29

30 Mean Squared Error This approach penalizes large forecasting errors. Dr. Mohammed Alahmed30

31 Root Mean Squared Error The RMSE is easy for most people to interpret because of its similarity to the basic statistical concept of a standard deviation, and it is one of the most commonly used measures of forecast accuracy. Dr. Mohammed Alahmed31

32 Theil’s U-statistic This statistic allows a relative comparison of formal forecasting methods with naïve approaches and also squares the errors involved so that large errors are given much more weight than smaller errors. Mathematically, Theil’s U-statistic is defined as Dr. Mohammed Alahmed32

33 Theil’s U-statistic U = 1 The naïve method is as good as the forecasting technique being evaluated. U < 1 The forecasting technique being used is better than the naïve method. U > 1 There is no point in using a formal forecasting method since using a naïve method will produce better results Dr. Mohammed Alahmed33

34 Example: VCR data Data was collected on the number of VCRs sold last year for Vernon’s Music store. Dr. Mohammed Alahmed34

35 Example: VCR data Dr. Mohammed Alahmed35

36 Example: VCR data Dr. Mohammed Alahmed36

37 Example: VCR data Dr. Mohammed Alahmed37

38 Example:VCR data Error analysis: Forecast (N1) RMSE = 7.24 Forecast (N2) ) RMSE = 8.97 Dr. Mohammed Alahmed38

39 Evaluating Forecasts We will focus on root-mean-squared error (RMSE) to evaluate the relative accuracy of various forecasting methods. All quantitative forecasting models are developed on the basis of historical data. When RMSE are applied to the historical data, they are often considered measures of how well various models fit the data (how well they work in the sample). Dr. Mohammed Alahmed39

40 Evaluating Forecasts To determine how accurate the models are in actual forecast (out of sample) a hold out period is often used for evaluation. It is possible that the best model “in sample” may not be the best in “out of sample”. Dr. Mohammed Alahmed40

41 Using Multiple Forecasts When forecasting Sales or some other business economic variables, it is best to consider more than one model. In our example of VCR sales, using the two naïve model, we could take the lowest forecast value as the most pessimistic, the highest as the most optimistic, and the average value as the most likely. This is the simplest way to combine forecasts. Dr. Mohammed Alahmed41

42 Sources of Data The quantity and type of data needed in developing forecasts can vary a great deal from one situation to another. –Some forecasting techniques require only data series that is to be forecasted Naïve method, exponential smoothing, decomposition method. –Some, like multiple regression methods require a data series for each variable included in the forecasting model. Dr. Mohammed Alahmed42

43 Sources of Data Sources of data –Internal records of the organization. –Outside of the organization Trade associations Governmental and syndicated services There is a wealth of data available on the internet. Dr. Mohammed Alahmed43


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