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Guide to Using Minitab For Basic Statistical Applications To Accompany Business Statistics: A Decision Making Approach, 6th Ed. Chapter 15: Analyzing and Forecasting Time Series Data By Groebner, Shannon, Fry, & Smith Prentice-Hall Publishing Company Copyright, 2005
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Chapter 15 Minitab Examples Trend Based Forecasting Trend Based Forecasting Taft Ice Cream Company Nonlinear Trend Nonlinear Trend Harrison Equipment Company Seasonal Adjustment Seasonal Adjustment Big Mountain Ski Resort Single Exponential Smoothing Single Exponential Smoothing Humboldt Electronics Company More Examples
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Chapter 15 Minitab Examples Double Exponential Smoothing Double Exponential Smoothing Billingsley Insurance Company
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Trend Based Forecasting - Taft Ice Cream Company Issue: The owners of Taft Ice Cream Company considering expanding their manufacturing facilities. The bank requires a forecast of future sales. Objective: Use Minitab to build a forecasting model based on 10 years of data. Data file is Taft.mtw
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Open File Taft.mtw Trend Based Forecasting – Taft Ice Cream Company
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First click on Graph, then Time Series Plot. Trend Based Forecasting – Taft Ice Cream Company
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In Y, enter data column. Under Time Scale choose Calendar and time unit. Click on Options. Trend Based Forecasting – Taft Ice Cream Company
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Enter 1991 as the starting year. Click OK. Trend Based Forecasting – Taft Ice Cream Company
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The linear trend is evident in this time series plot. Trend Based Forecasting – Taft Ice Cream Company
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First click on Stat, then Time Series and finally Trend Analysis. Trend Based Forecasting – Taft Ice Cream Company
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Identify the columns containing the Variable forming the time series. Also specify a Linear Model. Trend Based Forecasting – Taft Ice Cream Company
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Minitab constructs the graph, shows the Linear Trend Model and the values of MAD and MSD. Trend Based Forecasting – Taft Ice Cream Company
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Issue: Harrison Equipment is interested in forecasting future repair costs for a crawler tractor it leases to contractors. Harrison Equipment is interested in forecasting future repair costs for a crawler tractor it leases to contractors.Objective: Use Minitab to develop a nonlinear forecasting model. Data file is Harrison.mtw Nonlinear Trend – Harrison Equipment Company Nonlinear Trend – Harrison Equipment Company
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Open File Harrison.mtw Nonlinear Trend – Harrison Equipment Company
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First click on Stat, then Time Series and finally Trend Analysis. Nonlinear Trend – Harrison Equipment Company
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Identify the time series Variable and the Model Type. Nonlinear Trend – Harrison Equipment Company
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The Minitab output shows a plot of the data and trend line, the Linear Model and the MAPE, MAD and MSD values. Nonlinear Trend – Harrison Equipment Company
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To develop a nonlinear model, click on Stat, then Time Series and finally Trend Analysis. Nonlinear Trend – Harrison Equipment Company
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This time specify a Quadratic Model. Nonlinear Trend – Harrison Equipment Company
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The Minitab output shows a plot of the data and trend line, the Quadratic Model and the MAPE, MAD and MSD values. Nonlinear Trend – Harrison Equipment Company
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Click on Calc, then Calculator. Nonlinear Trend – Harrison Equipment Company
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Identify column for new variable, in Expressions box enter form of new variable. Click OK Nonlinear Trend – Harrison Equipment Company
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Click on Stat, then Regression and Regression again. Nonlinear Trend – Harrison Equipment Company
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Define the Response variable (repair Costs) Predictors (Qtr2) then click Storage. Nonlinear Trend – Harrison Equipment Company
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Under Diagnostic Measures select Residuals, under Characterist ics select Fits. Click OK twice. Nonlinear Trend – Harrison Equipment Company
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The Minitab output shows the regression model. It will also give a histogram plot of the residuals. Nonlinear Trend – Harrison Equipment Company
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Seasonal Adjustment - Big Mountain Ski Resort Seasonal Adjustment - Big Mountain Ski Resort Issue: The resort wants to build a forecasting model from data that has a definite seasonal component. Objective: Use Minitab to develop a forecasting model adjusting for seasonal data. Data file is Big Mountain.mtw
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Open File Big Mountain.mtw Seasonal Adjustment – Big Mountain Ski Resort
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Click on Stat, then Time Series and then select Decomposition. Seasonal Adjustment – Big Mountain Ski Resort
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Define the Variable, the Type of Model, the Periods in a season and the Model Components. Seasonal Adjustment – Big Mountain Ski Resort
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The graph shows the actual and predicted values. Seasonal Adjustment – Big Mountain Ski Resort
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This graph shows the original data and other graphs. Seasonal Adjustment – Big Mountain Ski Resort
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The Trend Line Equation, the Seasonal Indices and MAPE, MAD and MSD are also given. Seasonal Adjustment – Big Mountain Ski Resort
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Single Exponential Smoothing Humboldt Electronics Issue: The company needs to develop a forecasting model to help make inventory decisions, and wants the model to give more weight to recent values than to regression model do. Objective: Use Minitab to develop a single exponential smoothing forecasting model. Data file is Humboldt.mtw
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Open File Humboldt.mtw Single Exponential Smoothing – Humboldt Electronics
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Click on Stat, then Time Series and finally Single Exponential Smoothing. Single Exponential Smoothing – Humboldt Electronics
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Identify the Time Series Variable. Either specify alpha or ask Minitab to optimize the forecasting model. Single Exponential Smoothing – Humboldt Electronics
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The graph shows the actual and forecast values. The accuracy measures are also given. Single Exponential Smoothing – Humboldt Electronics
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Identify the Time Series Variable. Either specify alpha or ask Minitab to optimize the forecasting model. Single Exponential Smoothing – Humboldt Electronics
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The graph shows the actual and forecast values. The accuracy measures and the optimum alpha are also given. Single Exponential Smoothing – Humboldt Electronics
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Issue: The claims manager has data for 12 months and wants to forecast claims for month 13. But the time series contains a strong upward trend Objective: Use Minitab to develop a double exponential smoothing model. Data file is Billingsley.mtw Use Minitab to develop a double exponential smoothing model. Data file is Billingsley.mtw Double Exponential Smoothing Billingsley Insurance
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Open file Billingsley.mtw Double Exponential Smoothing – Billingsley Insurance
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Click on Stat then Time Series and finally Double Exponential Smoothing. Double Exponential Smoothing – Billingsley Insurance
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Identify the Time Series Variable. Either specify alpha and beta or ask Minitab to optimize the forecasting model. Double Exponential Smoothing – Billingsley Insurance
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The graph shows the actual and forecast values. The accuracy measures are also given. Double Exponential Smoothing – Billingsley Insurance
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Identify the Time Series Variable. Either specify alpha and beta or ask Minitab to optimize the forecasting model. Double Exponential Smoothing – Billingsley Insurance
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The graph shows the actual and forecast values. The accuracy measures and the optimum Alpha and Beta are also given. Double Exponential Smoothing – Billingsley Insurance
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